Wangjun Wu | Research and development of pig breeding technology | Best Researcher Award

Dr. Wangjun Wu | Research and development of pig breeding technology | Best Researcher Award

Dr. Wangjun Wu is an Associate Professor at Nanjing Agricultural University, specializing in animal genetics, breeding, and reproduction. Born on October 14, 1983, he earned his PhD from Huazhong Agricultural University. His research focuses on genetic improvement in livestock, emphasizing muscle and fat development. Dr. Wu has contributed to the field through patents, machine-learning applications, and high-impact publications. His work integrates genomics, epigenetics, and breeding technologies. With a strong background in molecular biology and computational genetics, he has developed AI-driven solutions for livestock improvement. 📚🔬🐖

Profile

Experience 👨‍🏫Education 🎓

Dr. Wangjun Wu completed his undergraduate studies in Animal Science at Hunan University of Arts and Science (2002-2006). He pursued a PhD in Animal Genetics, Breeding, and Reproduction at Huazhong Agricultural University (2006-2011). His academic training provided expertise in molecular genetics, livestock breeding, and advanced genomic technologies. His doctoral research focused on improving economic traits in livestock using modern breeding techniques. 🎓🔬📖

Awards & Recognitions 🏅

Dr. Wangjun Wu has received multiple accolades for his research in animal genetics. His AI-driven livestock assessment tools and breeding innovations have gained recognition. He has secured national patents for advanced genetic analysis systems and has been featured in prestigious journals. His contributions in genomic research and AI applications in animal breeding have positioned him as a leader in the field. 🏅🔬📜

Research Interests 🔬

Dr. Wu’s research revolves around genetic improvement in livestock, particularly in muscle and fat development. His work includes gene expression analysis, functional genomics, and AI-driven breeding technologies. He specializes in non-invasive ultrasound and X-ray imaging for meat quality assessment. His integration of machine learning and molecular biology in animal science has led to significant advancements in livestock breeding and production. 🧬🐖💡

Publications 

 

 

PİNAR ERKEKOGLU | Neurotoxicology | Best Researcher Award

Prof. PİNAR ERKEKOGLU | Neurotoxicology | Best Researcher Award

Prof. Dr. Pınar Erkekoğlu is a distinguished academician and toxicologist at Hacettepe University, serving as Head of the Department of Pharmaceutical Toxicology and Department of Vaccine Technology. She holds a PhD in toxicology (2009) and became a European Registered Toxicologist (ERT) in 2014. She conducted research at Joseph Fourier University, CEA/INAC/LAN, and completed her postdoctoral studies at MIT (2011-2013). With over 200 scientific publications, 10 edited books, and 15 book chapters, her work spans toxicology, neurotoxicology, and vaccinology. Her h-index is 34, with 107 SCI-indexed papers and numerous collaborations.

Profile

Education 🎓

Prof. Erkekoğlu earned her Pharmacy degree from Hacettepe University and a PhD in toxicology (2009). She gained international research experience at Joseph Fourier University and CEA/INAC/LAN during her doctorate. In 2011-2013, she pursued postdoctoral research at MIT, specializing in toxicology and environmental sciences. Recognized for her expertise, she became a European Registered Toxicologist (ERT) in 2014.

Experience 👨‍🏫

Prof. Erkekoğlu has extensive experience in toxicology, environmental sciences, and vaccinology. She is the Head of Pharmaceutical Toxicology and Vaccine Technology at Hacettepe University. She has worked at MIT, Joseph Fourier University, and CEA/INAC/LAN. With 49 research projects, 4 industry consultancies, and 12 collaborations, she has contributed significantly to toxicological sciences.

Awards & Recognitions 🏅

Prof. Erkekoğlu has received numerous awards, including Best Researcher and Women Researcher Awards. She is recognized internationally for her contributions to toxicology, neurotoxicology, and vaccine technology. She has served as an editor for scientific books, peer-reviewed journals, and major toxicology conferences.

Research Interests 🔬

Her research encompasses neurotoxicology, endocrine disruption, environmental toxicology, and vaccinology. She has published 107 SCI-indexed papers and 161 documents in Scopus across pharmacology, medicine, and environmental sciences. Her work explores the toxic effects of chemicals on human health and vaccine development.

Publications 

  • Prepubertal phthalate exposure can cause histopathological alterations, DNA methylation and histone acetylation changes in rat brain

    Toxicology and Industrial Health
    2025-03 | Journal article
    CONTRIBUTORS: Seyda Koc; Ekin Erdogmus; Ozlem Bozdemir; Deniz Ozkan-Vardar; Unzile Yaman; Pınar
    Erkekoglu; Naciye Dilara Zeybek; Belma Kocer-Gumusel
  • The ameliorative potential of metformin against aluminum‐induced neurotoxicity: Insights from in vitro studies

    Journal of Applied Toxicology
    2025-02 | Journal article
    CONTRIBUTORS: Sonia Sanajou; Anil Yirün; Göksun Demirel; Pinar Erkekoğlu; Gönül Şahin; Terken Baydar
  • Unveiling connections: bisphenol A and vitamin D dynamics in breast milk among healthy lactating mothers

    International Journal of Environmental Health Research
    2024-10-10 | Journal article
    CONTRIBUTORS: Esra Cinkilli Aktağ; Sıddika Songül Yalçin; Anıl Yіrün; Aylin Balci Özyurt; Pınar Erkekoğlu
  • Bisphenol derivatives in cord blood and association between thyroid hormones and potential exposure sources

    International Journal of Environmental Health Research
    2024-08-02 | Journal article
    CONTRIBUTORS: Merve Buke Sahin; Murat Cagan; Anıl Yirun; Aylin Balcı Ozyurt; Selinay Basak Erdemli Kose; Irem Iyigun; Melda Celik; Ozgur Ozyuncu; Pınar Erkekoglu; Cavit Isik Yavuz
  • Comparative in silico and in vitro evaluation of possible toxic effects of bisphenol derivatives in HepG2 cells

    Toxicology Research
    2024-07-01 | Journal article
    CONTRIBUTORS: Aylin Balci-Ozyurt; Anıl Yirun; Deniz Arca Cakır; İbrahim Ozcelik; Merve Bacanli; Gizem Ozkemahli; Suna Sabuncuoglu; Nursen Basaran; Pınar Erkekogl

 

Jingjun Lin | Laser-Induced Breakdown Spectroscopy (LIBS) | Best Researcher Award

Dr. Jingjun Lin | Laser-Induced Breakdown Spectroscopy (LIBS) | Best Researcher Award

Dr. Jingjun Lin is a Lecturer at Changchun University of Technology, specializing in laser-induced breakdown spectroscopy (LIBS) and advanced spectral analysis. He has made significant contributions to the field of spectroscopy, materials science, and machine learning-based classification techniques. As an active researcher, he has published extensively in high-impact journals, advancing applications in metal analysis, additive manufacturing, and biomedical diagnostics. With experience as a visiting scholar at Tokushima University, Japan, Dr. Lin continuously explores innovative methodologies to improve spectral detection accuracy. His interdisciplinary expertise bridges spectroscopy, physics, and artificial intelligence. ✨🔬📊

Profile

Education 🎓

  • 🏛 Ph.D. Changchun University of Technology (2015-2018), with research at Huazhong University of Science and Technology (2018)
  • 🎓 Master’s Degree Changchun University of Technology (2012-2015)
  • 🎓 Bachelor’s Degree Changchun University of Technology (2008-2012)
    Dr. Lin’s academic journey reflects a deep commitment to the study of spectroscopy, laser-induced breakdown analysis, and materials science. His research focuses on enhancing spectral analysis techniques and applying machine learning models to spectroscopy data. His Ph.D. research involved novel LIBS applications for material classification and defect detection, further refined during his studies at Huazhong University of Science and Technology. 📚🔍🎯

Experience 👨‍🏫

  • Visiting Scholar Tokushima University, Japan (2023-2024) 🌍
  • Lecturer Changchun University of Technology (2019-Present) 🏛
    Dr. Lin has been an academic professional dedicated to teaching and research in laser-induced breakdown spectroscopy (LIBS), spectroscopic data fusion, and materials analysis. His tenure as a lecturer at Changchun University of Technology involves mentoring students and leading research projects. As a visiting scholar at Tokushima University, he gained international exposure, refining his expertise in advanced laser spectroscopy and its industrial applications. 🧑‍🔬📖✨

Awards & Recognitions 🏅

Dr. Lin has received multiple research grants and recognition for his contributions to spectroscopy and analytical chemistry. His papers have been published in high-impact journals such as Analytical Methods, Journal of Analytical Atomic Spectrometry, and Talanta. His innovative work on LIBS and Raman spectroscopy fusion for lung cancer diagnosis has been acknowledged for its potential clinical applications. 🏅📜🔬

Research Interests 🔬

Dr. Lin specializes in laser-induced breakdown spectroscopy (LIBS), machine learning-enhanced spectral analysis, and multi-modal spectroscopy fusion. His work includes:

  • Metal additive manufacturing defect detection using LIBS 🏭
  • Biomedical applications, including lung cancer classification with spectroscopy 🏥
  • Data fusion of LIBS and Raman spectroscopy for improved accuracy 🤖📊
  • Spectral enhancement techniques for more precise material identification 💡
    His interdisciplinary research aims to push the boundaries of LIBS applications in industry, healthcare, and environmental monitoring. 🚀🔍

Publications 

Quanying Lu | Forecasting | Best Researcher Award

Dr. Quanying Lu | Forecasting | Best Researcher Award

Dr. Quanying Lu is an Associate Professor at Beijing University of Technology, specializing in energy economics, forecasting, and systems engineering. 🎓 She completed her Ph.D. at the University of Chinese Academy of Sciences and has published 30+ papers in top journals, including Nature Communications and Energy Economics. 📚 She has held postdoctoral and research positions in prestigious institutions and actively contributes to policy research. 🌍

Profile

Education 🎓

  • Ph.D. (2017-2020): University of Chinese Academy of Sciences, School of Economics and Management, supervised by Prof. Shouyang Wang.
  • M.Sc. (2014-2017): International Business School, Shaanxi Normal University, supervised by Prof. Jian Chai.
  • B.Sc. (2010-2014): International Business School, Shaanxi Normal University, Department of Economics and Statistics.

Experience 👨‍🏫

  • Associate Professor (06/2022–Present), Beijing University of Technology, supervising Ph.D. students.
  • Postdoctoral Fellow (07/2020–05/2022), Academy of Mathematics and Systems Science, Chinese Academy of Sciences.
  • Research Assistant (08/2018–10/2018), Department of Management Sciences, City University of Hong Kong.

Awards & Recognitions 🏅

  • Outstanding Young Talent, Phoenix Plan, Chaoyang District, Beijing (2024).
  • Young Scholar of Social Computing, CAAI-BDSC (2024).
  • Young Scholar of Forecasting Science, Frontier Forum on Forecasting Science (2024).
  • Young Elite Scientists Sponsorship, BAST (2023).
  • Excellent Mentor, China International “Internet Plus” Innovation Competition (2023).

Research Interests 🔬

Dr. Lu specializes in energy economics, environmental policy analysis, economic forecasting, and systems engineering. 📊 Her research addresses crude oil price dynamics, carbon reduction strategies, and financial market interactions. 💡 She integrates machine learning with forecasting models, contributing to sustainable energy and environmental policies. 🌍

Publications 

[1] Liang, Q., Lin, Q., Guo, M., Lu, Q., Zhang, D. Forecasting crude oil prices: A
Gated Recurrent Unit-based nonlinear Granger Causality model. International
Review of Financial Analysis, 2025, 104124.
[2] Wang, S., Li, J., Lu, Q. (2024) Optimization of carbon peaking achieving paths in
Chinas transportation sector under digital feature clustering. Energy, 313,133887
[3] Yang, B., Lu, Q.*, Sun, Y., Wang, S., & Lai, K. K. Quantitative evaluation of oil
price fluctuation events based on interval counterfactual model (in Chinese).
Systems Engineering-Theory & Practice, 2023, 43(1):191-205.
[4] Lu, Q.*, Shi, H., & Wang, S. Estimating the shock effect of “Black Swan” and
“Gray Rhino” events on the crude oil market: the GSI-BN research framework (in
Chinese). China Journal of Econometrics, 2022, 1(2): 194-208.
[5] Lu, Q., Duan, H.*, Shi, H., Peng, B., Liu, Y., Wu, T., Du, H., & Wang, S*. (2022).
Decarbonization scenarios and carbon reduction potential for China’s road
transportation by 2060. npj Urban Sustainability, 2: 34. DOI:
https://www.nature.com/articles/s42949-022-000.
[6] Lu, Q., Sun, Y.*, Hong, Y., Wang, S. (2022). Forecasting interval-valued crude
oil prices via threshold autoregressive interval models. Quantitative Finance,
DOI: 10.1080/14697688.2022.2112065
Page 3 / 6
[7] Guo, Y., Lu, Q.*, Wang, S., Wang, Q. (2022). Analysis of air quality spatial
spillover effect caused by transportation infrastructure. Transportation Research
Part D: Transport & Environment, 108, 103325.
[8] Wei, Z., Chai, J., Dong, J., Lu, Q. (2022). Understanding the linkage-dependence
structure between oil and gas markets: A new perspective. Energy, 257, 124755.
[9] Chai, J., Zhang, X.*, Lu, Q., Zhang, X., & Wang, Y. (2021). Research on
imbalance between supply and demand in China’s natural gas market under the
double -track price system. Energy Policy, 155, 112380.
[10]Lu, Q., Sun, S., Duan, H.*, & Wang, S. (2021). Analysis and forecasting of crude
oil price based on the variable selection-LSTM integrated model. Energy
Informatics, 4 (Suppl 2):47.
[11]Shi, H., Chai, J.*, Lu, Q., Zheng, J., & Wang, S. (2021). The impact of China’s
low-carbon transition on economy, society and energy in 2030 based on CO2
emissions drivers. Energy, 239(1):122336, DOI: 10.1016/j.energy.2021.122336.
[12]Jiang, S., Li, Y., Lu, Q., Hong, Y., Guan, D.*, Xiong, Y., & Wang, S.* (2021).
Policy assessments for the carbon emission flows and sustainability of Bitcoin
blockchain operation in China. Nature Communications, 12(1), 1-10.
[13]Jiang, S., Li Y., Lu, Q., Wang, S., & Wei, Y*. (2021). Volatility communicator or
receiver? Investigating volatility spillover mechanisms among Bitcoin and other
financial markets. Research in International Business and Finance,
59(4):101543.
[14]Lu, Q., Li, Y., Chai, J., & Wang, S.* (2020). Crude oil price analysis and
forecasting :A perspective of “new triangle”. Energy Economics, 87, 104721.
DOI: 10.1016/j.eneco.2020.104721.
[15]Chai, J., Shi, H.*, Lu, Q., & Hu, Y. (2020). Quantifying and predicting the
Water-Energy-Food-Economy-Society-Environment Nexus based on Bayesian
networks – a case study of China. Journal of Cleaner Production, 256, 120266.
DOI: 10.1016/j.jclepro.2020.120266.
[16]Lu, Q., Chai, J., Wang, S.*, Zhang, Z. G., & Sun, X. C. (2020). Potential energy
conservation and CO2 emission reduction related to China’s road transportation.
Journal of Cleaner Production, 245, 118892. DOI:
10.1016/j.jclepro.2019.118892.
[17]Chai, J., Lu, Q.*, Hu, Y., Wang, S., Lai, K. K., & Liu, H. (2018). Analysis and
Bayes statistical probability inference of crude oil price change point.
Technological Forecasting & Social Change, 126, 271-283.
[18]Chai, J., Lu, Q.*, Wang, S., & Lai, K. K. (2016). Analysis of road transportation
consumption demand in China. Transportation Research Part D: Transport &
Environment, 2016, 48:112-124.

 

Shiqi Huang | Drug delivery system | Best Researcher Award

Prof Dr. Shiqi Huang | Drug delivery system | Best Researcher Award

Shiqi Huang holds a Ph.D. from West China School of Pharmacy, Sichuan University, China. She is an associate researcher at the College of Polymer Science and Engineering, Sichuan University, working under Professor Ling Zhang. Her research focuses on improving the disease process of ischemic stroke and other life-threatening conditions. She has received support from the National Science Fund for Young Scholars, the National Fund for Postdoctoral Research Projects, the No.75 General Fund of the China Postdoctoral Science Foundation, and the Science Fund for Young Scholars of Sichuan Province.

Profile

Education 🎓

Shiqi Huang completed her Ph.D. at the West China School of Pharmacy, Sichuan University, China. Her academic training provided a strong foundation in drug delivery systems and nanomedicine. Her research explored novel nanocarriers for targeted therapy and combination treatments, contributing to advancements in biomedical sciences. Her studies were supported by national and provincial funding bodies, recognizing her potential in pharmaceutical research.

Experience 👨‍🏫

Dr. Huang serves as an associate researcher at the College of Polymer Science and Engineering, Sichuan University. She actively contributes to research under Professor Ling Zhang’s group, focusing on targeted drug delivery and nanotechnology. She has played a crucial role in projects funded by prestigious organizations, collaborating on translational research aimed at developing innovative therapeutic strategies. Her work extends beyond academia, impacting biomedical applications through interdisciplinary approaches.

Research Interests 🔬

Dr. Huang specializes in drug delivery systems and targeted nanomaterials. Her research explores novel nanocarriers for cancer therapy, ischemic stroke, and other diseases. She has contributed to high-impact publications in SCI journals such as Advanced Materials, Journal of Controlled Release, and European Journal of Medicinal Chemistry. Her studies aim to enhance the efficacy and safety of therapeutic agents through precision medicine and nanotechnology

Awards & Recognitions 🏅

Dr. Huang has received multiple prestigious grants and awards, including the National Science Fund for Young Scholars, the National Fund for Postdoctoral Research Projects, the No.75 General Fund of the China Postdoctoral Science Foundation, and the Science Fund for Young Scholars of Sichuan Province. These honors highlight her contributions to pharmaceutical sciences and her commitment to advancing medical research through innovative drug delivery strategies.

Publications 

  • 1.Shiqi Huang, Yining Zhu, Ling Zhang*, and Zhirong Zhang. Recent Advances in Delivery Systems for Genetic and Other Novel Vaccines. Advanced Materials, 2021: 2107946.2.Shiqi Huang, Yicong Zhang, Luyao Wang, Wei Liu, Linyu Xiao, Qing Lin, Tao Gong, Xun Sun, Qin He, Zhirong Zhang, and Zhang Ling*. Improved Melanoma Suppression with Target-delivered TRAIL and Paclitaxel by a multifunctional Nanocarrier. Journal of Controlled Release, 2020,325:10-24.3.Shiqi Huang, Lang Deng, Hanming Zhang, Luyao Wang, Yicong Zhang, Qing Lin, Tao Gong, Xun Sun, Zhirong Zhang*, and Ling Zhang*. Co-delivery of TRAIL and paclitaxel by fibronectin-targeting liposomal nanodisk for effective lung melanoma metastasis treatment. Nano Research, 2022, 15(1): 728-737.

    4.Shiqi Huang, Hanming Zhang, Yicong Zhang, Luyao Wang, Zhirong Zhang, and Ling Zhang*. Comparison of two methods for tumour-targeting peptide modification of liposomes. Acta Pharmacologica Sinica, 2023, 44(4): 832-840.

    5.Hanming Zhang, Honglin Gao, Yicong Zhang, Yikun Han, Qing Lin, Tao Gong, Xun Sun, Zhirong Zhang, Ling Zhang*, and Shiqi Huang*. Enzyme-activatable disk-shaped nanocarriers augment tumor permeability for breast cancer combination therapy. Nano Research, 2024: 1-11.

    6. Jiaxi Han, Haozhou Shu, Ling Zhang*, and Shiqi Huang*. Latest advances in hydrogel therapy for ocular diseases. Polymer, 2024, 306: 127207.

 

Ibrahim Akinjobi Aromoye | Computer Vision | Best Researcher Awards

Mr.Ibrahim Akinjobi Aromoye | Computer Vision | Best Researcher Awards

Aromoye Akinjobi Ibrahim is a dedicated researcher in Electrical and Electronic Engineering, currently pursuing an MSc (Research) at Universiti Teknologi PETRONAS, Malaysia. His research focuses on hybrid drones for pipeline inspection, integrating machine learning to enhance surveillance capabilities. With a B.Eng. in Computer Engineering from the University of Ilorin, Nigeria, he has excelled in robotics, artificial intelligence, and digital systems. Aromoye has extensive experience as a research assistant, STEM educator, and university teaching assistant, contributing to 5G technology, UAV development, and machine learning applications. He has authored multiple research papers in reputable journals and conferences. A proactive leader, he has held executive roles in student associations and led innovative projects. His expertise spans embedded systems, IoT, and cybersecurity, complemented by certifications in Python, OpenCV, and AI-driven vision systems. He actively contributes to academic peer review and professional development, demonstrating a commitment to technological advancements and education.

Profile

Education 🎓

Aromoye Akinjobi Ibrahim is pursuing an MSc (Research) in Electrical and Electronic Engineering at Universiti Teknologi PETRONAS (2023-2025), focusing on hybrid drones for pipeline inspection under the supervision of Lo Hai Hiung and Patrick Sebastian. His research integrates machine learning with air buoyancy technology to enhance UAV flight time. He holds a B.Eng. in Computer Engineering from the University of Ilorin, Nigeria (2015-2021), graduating with a Second Class Honors (Upper) and a CGPA of 4.41/5.0. His undergraduate thesis involved developing a smart bidirectional digital counter with a light control system for energy-efficient automation. Excelling in digital signal processing, AI applications, robotics, and software engineering, he has consistently demonstrated technical excellence. His academic journey is enriched with top grades in core engineering courses and hands-on experience in embedded systems, IoT, and AI-driven automation, making him a skilled researcher and developer in advanced engineering technologies.

Experience 👨‍🏫

Aromoye has diverse experience spanning research, teaching, and industry. As a Graduate Research Assistant at Universiti Teknologi PETRONAS (2023-present), he specializes in hybrid drone development, 5G technologies, and machine learning for UAVs. His contributions include designing autonomous systems and presenting research at international conferences. Previously, he was an Undergraduate Research Assistant at the University of Ilorin (2018-2021), where he worked on digital automation and AI-driven projects. In academia, he has been a Teaching Assistant at UTP, instructing courses in computer architecture, digital systems, and electronics. His industry roles include STEM Educator at STEMCafe (2022-2023), where he taught Python, robotics, and electronics, and a Mobile Games Development Instructor at Center4Tech (2019-2021), guiding students in game design. He also worked as a Network Support Engineer at the University of Ilorin (2018). His expertise spans AI, IoT, and automation, making him a versatile engineer and educator.

Awards & Recognitions 🏅

Aromoye has received prestigious scholarships and leadership recognitions. He is a recipient of the Yayasan Universiti Teknologi PETRONAS (YUTP-FRG) Grant (2023-2025), a fully funded scholarship supporting his MSc research in hybrid drones. As an undergraduate, he demonstrated leadership by serving as President of the Oyun Students’ Association at the University of Ilorin (2019-2021) and previously as its Public Relations Officer (2018-2019). He led several undergraduate research projects, including developing a smart bidirectional digital counter with a light controller system, earning accolades for innovation in automation. His contributions extend to professional peer review for IEEE Access and Results in Engineering. Additionally, he has attained multiple certifications in cybersecurity (MITRE ATT&CK), IoT, and AI applications, reinforcing his technical expertise. His dedication to academic excellence, leadership, and research impact continues to shape his career in engineering and technology.

Research Interests 🔬

Aromoye’s research revolves around hybrid UAVs, AI-driven automation, and 5G-enabled surveillance systems. His MSc thesis at Universiti Teknologi PETRONAS explores the development of a Pipeline Inspection Air Buoyancy Hybrid Drone, enhancing flight efficiency through a combination of lighter-than-air and heavier-than-air technologies. His work integrates deep learning-based object detection algorithms for real-time pipeline monitoring. He has contributed to multiple research publications in IEEE Access, Neurocomputing, and Elsevier journals, covering UAV reconnaissance, transformer-based pipeline detection, and swarm intelligence. His research interests extend to AI-driven control systems, autonomous robotics, and IoT-based energy-efficient automation. Additionally, he investigates cybersecurity applications in UAVs and smart embedded systems. His interdisciplinary expertise enables him to develop innovative solutions for industrial surveillance, automation, and smart infrastructure, positioning him as a leading researcher in AI-integrated engineering technologies.

Publications 

  • Significant Advancements in UAV Technology for Reliable Oil and Gas Pipeline Monitoring

    Computer Modeling in Engineering & Sciences
    2025-01-27 | Journal article
    Part ofISSN: 1526-1506
    CONTRIBUTORS: Ibrahim Akinjobi Aromoye; Hai Hiung Lo; Patrick Sebastian; Shehu Lukman Ayinla; Ghulam E Mustafa Abro
  • Real-Time Pipeline Tracking System on a RISC-V Embedded System Platform

    14th IEEE Symposium on Computer Applications and Industrial Electronics, ISCAIE 2024
    2024 | Conference paper
    EID:

    2-s2.0-85198901224

    Part of ISBN: 9798350348798
    CONTRIBUTORS: Wei, E.S.S.; Aromoye, I.A.; Hiung, L.H.

 

Yangyang Ju | Smart gas sensor | Young Scientist Award

Ms. Yangyang Ju | Smart gas sensor | Young Scientist Award

Yangyang Ju is an Assistant Professor at the Advanced Research Institute of Multidisciplinary Science, Beijing Institute of Technology. She earned her Ph.D. in Physics and Mathematics from Tomsk Polytechnic University, Russia, in 2019, following her graduation from Jilin University in 2013. Her research focuses on nanomaterials, optoelectronic and gas-sensitive materials, smart gas sensors, and the stability of halide perovskite materials. She has led multiple research projects, including those funded by the National Natural Science Foundation of China and the Beijing Foreign High-level Young Talent Program. With 14 published articles in indexed journals and two patented oxygen sensors, her contributions to material science are significant. She collaborates with global research teams, including ITMO in Russia, and serves as a special issue editor for Materials. She is also a member of the Chinese Institute of Electronics.

Profile

Education 🎓

Yangyang Ju completed her undergraduate studies at Jilin University in 2013. She pursued her Ph.D. in Physics and Mathematics at Tomsk Polytechnic University, Russia, completing it in 2019. Her doctoral research focused on the development and stability of halide perovskite materials for optoelectronic applications. She later conducted postdoctoral research at the Beijing Institute of Technology, where she expanded her expertise in gas-sensitive nanomaterials and smart sensors. Through various academic and industrial collaborations, she has gained in-depth knowledge of material science, sensor technology, and advanced nanomaterials. Her education laid the foundation for her innovative work in trace gas sensors and perovskite-based devices. With a strong interdisciplinary background, she integrates physics, chemistry, and engineering principles to develop cutting-edge materials for environmental and industrial applications.

Experience 👨‍🏫

Yangyang Ju is currently an Assistant Professor at the Beijing Institute of Technology’s Advanced Research Institute of Multidisciplinary Science. She has led multiple national and international research projects, including grants from the National Natural Science Foundation of China and the Beijing Foreign High-level Young Talent Program. As a Principal Investigator, she has successfully managed projects focusing on perovskite materials and gas sensors. Previously, she collaborated with ITMO University in Russia, where she worked on phase purity control in quasi-2D PeLEDs, leading to multiple indexed publications. Additionally, she has held key roles in technology development projects with Zhijing Technology (Beijing) Co., Ltd. Her work has led to two patents on oxygen detection devices. She also serves as a special issue editor for Materials and is a professional member of the Chinese Institute of Electronics.

Research Interests 🔬

Yangyang Ju specializes in trace gas sensors, metal halide perovskites, gas-sensitive materials, and nanomaterials. Her research explores the stability of halide perovskites under different environmental conditions, focusing on their applications in optoelectronics and gas sensing. She has contributed significantly to understanding the impact of oxygen concentration on the fluorescence of 2D tin-based perovskites, leading to the development of fiber-optic trace oxygen sensors with high sensitivityhttps://cognitivescientist.org/?p=12953&preview=true. Her work has been published in Matter, Advanced Functional Materials, and Advanced Science. She has also collaborated with ITMO University in Russia to optimize phase purity control in quasi-2D PeLEDs. Her studies on perovskite-oxygen interactions have provided critical insights into material stability and sensor applications. Through national and international collaborations, she continues to advance research on smart gas sensors and high-performance nanomaterials for industrial and environmental monitoring.

Awards & Recognitions 🏅

Yangyang Ju has received several prestigious awards, including funding from the Beijing Foreign High-level Young Talent Program (2024) and the Young Faculty Startup Program of Beijing Institute of Technology. She was also awarded grants by the National Natural Science Foundation of China for her pioneering research in gas-sensitive materials and nanotechnology. Her work in material stability and sensor development has been recognized through national and international collaborations, including a cooperative exchange project with the Fundamental Research Foundation of Belarus. She has received recognition for her outstanding contributions to perovskite research and gas sensor development, leading to multiple high-impact journal publications. Her patents on oxygen detection devices further demonstrate her innovation in applied material sciences.

Publications 

  • Catalytic Sensor-Based Software-Algorithmic System for the Detection and Quantification of Combustible Gases in Complex Mixtures

    Sensors and Actuators A: Physical
    2025-03 | Journal article
    CONTRIBUTORS: Tatiana Osipova; Alexander Baranov; Haowen Zhang; Ivan Ivanov; Yangyang Ju
  • Response of Catalytic Hydrogen Sensors at Low and Negative Ambient Temperatures

    IEEE Sensors Letters
    2023-12 | Journal article
    CONTRIBUTORS: Vladislav Talipov; Alexander Baranov; Ivan Ivanov; Yangyang Ju
  • Color‐Stable Two‐Dimensional Tin‐Based Perovskite Light‐Emitting Diodes: Passivation Effects of Diphenylphosphine Oxide Derivatives

    Advanced Functional Materials
    2023-07 | Journal article
    CONTRIBUTORS: Chenhui Wang; Siqi Cui; Yangyang Ju; Yu Chen; Shuai Chang; Haizheng Zhong
  • Fast-Response Oxygen Optical Fiber Sensor based on PEA<sub>2</sub>SnI<sub>4</sub> Perovskite with Extremely Low Limit of Detection

    Advanced Science
    2022 | Journal article

 

Yuanming Zhang | Intelligent data processing and analysis | Best Researcher Award

Dr. Yuanming Zhang | Intelligent data processing and analysis | Best Researcher Award

Yuanming Zhang is an Associate Professor at the College of Computer Science and Technology, Zhejiang University of Technology, Hangzhou, China. He earned his Ph.D. in Information Science from Utsunomiya University, Japan, in 2010. His research focuses on data processing, graph neural networks, knowledge graphs, prognostics, health management, and condition monitoring. With expertise in deep learning and artificial intelligence, he has contributed significantly to neural network advancements. His work integrates cutting-edge technologies for intelligent data analysis and predictive maintenance. 📊🧠🔍

Profile

Education 🎓

Yuanming Zhang obtained his Ph.D. in Information Science from Utsunomiya University, Japan, in 2010. His academic journey emphasized computational intelligence, machine learning, and advanced data analytics. He developed expertise in deep learning models, including convolutional and graph neural networks. His education laid a strong foundation for interdisciplinary research, integrating artificial intelligence with real-world applications. 📚🧑‍🎓📈

Experience 👨‍🏫

Yuanming Zhang has been an Associate Professor at Zhejiang University of Technology since completing his Ph.D. in 2010. His professional journey spans over a decade in academia, focusing on AI, neural networks, and knowledge graphs. He has supervised research projects, collaborated on industry applications, and contributed to advancements in predictive analytics and condition monitoring. His expertise extends to teaching, mentoring, and interdisciplinary AI applications. 🏫🤖📡

Research Interests 🔬

Yuanming Zhang specializes in deep learning, attention mechanisms, graph neural networks, and AI-driven predictive analytics. His research explores neural architectures for data processing, knowledge representation, and condition monitoring. His expertise spans convolutional networks, LSTMs, GRUs, and deep belief networks. His work contributes to advancements in AI-driven diagnostics, intelligent systems, and real-time health monitoring applications. 🧠📊🖥️

Awards & Recognitions 🏅

Yuanming Zhang has received recognition for his contributions to AI, machine learning, and data analytics. His work in deep learning and knowledge graphs has earned him accolades from research institutions and conferences. His papers in neural networks and predictive maintenance have been highly cited, solidifying his impact in the field. His research excellence has been acknowledged through grants and academic distinctions. 🎖️📜🔬

Publications 

 

Elsa Pittaras | Neuroscience | Women Researcher Award

Dr. Elsa Pittaras | Neuroscience | Women Researcher Award

Elsa Pittaras is a Basic Life Research Scientist at Stanford University, specializing in neuroscience, cognition, and sleep research. With expertise in molecular biology, neuroanatomy, pharmacology, and behavior, she has extensively studied decision-making processes in mice. Her research has contributed significantly to understanding sleep deprivation’s effects on cognition and memory in Down Syndrome and Alzheimer’s disease models. She has published multiple papers as both first and last author, showcasing her leadership in neuroscience. Elsa’s goal is to advance research on mood disorders, cognition, and neurochemistry, aspiring to become an independent researcher in the U.S. 🇺🇸🔬🧠

Profile

Education 🎓

Elsa Pittaras earned a B.S. in Physiology from the University of Caen (2010), an M.S. in Neuroscience from the University of Paris Sud and ENS Cachan (2012), and a Ph.D. in Neuroscience from Neuro-PSI and the Biomedical Research Unit of the French Army (2016). Her multidisciplinary foundation in biology, physics, chemistry, and mathematics from Châtelet, Douai (2009) laid the groundwork for her neuroscience expertise. Throughout her education, she focused on decision-making, sleep deprivation, and neurochemical mechanisms in cognition. 🧠📚🎓

Experience 👨‍🏫

Elsa Pittaras has been a Basic Life Research Scientist at Stanford University since 2022, focusing on cognitive enhancement in Down Syndrome and Alzheimer’s disease models. She was a Postdoctoral Fellow at Stanford (2017-2022), investigating sleep and circadian rhythms’ effects on memory. Previously, she conducted research at the Biomedical Research Unit of the French Army (2016-2017) and completed her Ph.D. at Neuro-PSI. Her career includes internships in neuroscience at Neuro-PSI (2011-2012) and clinical observations at CHU Caen (2010). 🏛️🧬🧪

Research Interests 🔬

Elsa’s research explores decision-making, memory, and sleep in neurodevelopmental disorders. She pioneered the Mouse Gambling Task, revealing individual decision-making strategies. Her Ph.D. identified neurochemical markers of decision-making behaviors and the effects of sleep deprivation. At Stanford, she investigates sleep’s impact on cognition in Down Syndrome and Alzheimer’s models, aiming to improve memory and sleep quality through pharmacological interventions. Her work bridges behavioral neuroscience with neurochemistry to enhance cognitive function. 🧠💡🛌

Awards & Recognitions 🏅

Elsa has received prestigious grants, including the Jerome Lejeune Research Grants (2019, 2020), the Fyssen Foundation Research Grant (2017), and travel awards for conferences such as T21RS (2021) and Advances in Sleep and Circadian Science (2019). She was also recognized by the French Society for Research and Sleep Medicine (2014) and received a European Neuroscience Federation travel award (2016). 🏅

Publications 

  • Selectively Blocking Small Conductance Ca2+-Activated K+ Channels Improves Cognition in Aged Mice.

  • Short-term γ-aminobutyric acid antagonist treatment improves long-term sleep quality, memory, and decision-making in a Down syndrome mouse model

  • Behavioral and Neuronal Characterizations, across Ages, of the TgSwDI Mouse Model of Alzheimer’s Disease.

  • Inter-individual differences in cognitive tasks: focusing on the shaping of decision-making strategies

  • Handling, task complexity, time-of-day, and sleep deprivation as dynamic modulators of recognition memory in mice

  • Enhancing sleep after training improves memory in down syndrome model mice

 

Alvaro Garcia | Computer vision | Best Researcher Award

Dr. Alvaro Garcia | Computer vision | Best Researcher Award

Álvaro García Martín es Profesor Titular en la Universidad Autónoma de Madrid, especializado en visión por computadora y análisis de video. 🎓 Obtuvo su título de Ingeniero de Telecomunicación en 2007, su Máster en Ingeniería Informática y Telecomunicaciones en 2009 y su Doctorado en 2013, todos en la Universidad Autónoma de Madrid. 🏫 Ha trabajado en detección de personas, seguimiento de objetos y reconocimiento de eventos, con más de 22 artículos en revistas indexadas y 28 en congresos. 📝 Ha realizado estancias en Carnegie Mellon University, Queen Mary University y Technical University of Berlin. 🌍 Su investigación ha contribuido al desarrollo de sistemas de videovigilancia inteligentes, análisis de secuencias de video y procesamiento de señales multimedia. 📹 Ha sido reconocido con prestigiosos premios y ha participado en múltiples proyectos europeos de innovación tecnológica. 🚀

Profile

Education 🎓

🎓 Ingeniero de Telecomunicación por la Universidad Autónoma de Madrid (2007). 🎓 Máster en Ingeniería Informática y Telecomunicaciones con especialización en Tratamiento de Señales Multimedia en la Universidad Autónoma de Madrid (2009). 🎓 Doctor en Ingeniería Informática y Telecomunicación por la Universidad Autónoma de Madrid (2013). Su formación ha sido complementada con estancias en reconocidas universidades internacionales, incluyendo Carnegie Mellon University (EE.UU.), Queen Mary University (Reino Unido) y la Technical University of Berlin (Alemania). 🌍 Durante su doctorado, recibió la beca FPI-UAM para la realización de su investigación. Su sólida formación académica le ha permitido contribuir significativamente al campo del análisis de video y visión por computadora, consolidándose como un experto en la detección, seguimiento y reconocimiento de eventos en secuencias de video. 📹

Experience 👨‍🏫

🔬 Se unió al grupo VPU-Lab en la Universidad Autónoma de Madrid en 2007. 📡 De 2008 a 2012, fue becario de investigación (FPI-UAM). 🎓 Entre 2012 y 2014, trabajó como Profesor Ayudante. 👨‍🏫 De 2014 a 2019, fue Profesor Ayudante Doctor. 📚 De 2019 a 2023, ocupó el cargo de Profesor Contratado Doctor. 🏛️ Desde septiembre de 2023, es Profesor Titular en la Universidad Autónoma de Madrid. 🏆 Ha participado en múltiples proyectos europeos sobre videovigilancia, transmisión de contenido multimedia y reconocimiento de eventos, incluyendo PROMULTIDIS, ATI@SHIVA, EVENTVIDEO y MobiNetVideo. 🚀 Ha realizado estancias de investigación en Carnegie Mellon University, Queen Mary University y Technical University of Berlin. 🌍 Su experiencia docente abarca asignaturas en Ingeniería de Telecomunicaciones, Ingeniería Informática e Ingeniería Biomédica.

Research Interests 🔬

🎯 Su investigación se centra en la visión por computadora, el análisis de secuencias de video y la inteligencia artificial aplicada a entornos de videovigilancia. 📹 Especialista en detección de personas, seguimiento de objetos y reconocimiento de eventos en video. 🧠 Desarrolla algoritmos de aprendizaje profundo y visión artificial para mejorar la seguridad y automatización en ciudades inteligentes. 🏙️ Ha trabajado en proyectos sobre videovigilancia, transmisión multimedia y detección de anomalías en video. 🔬 Su investigación incluye procesamiento de imágenes, análisis semántico y redes neuronales profundas. 🚀 Participa activamente en proyectos internacionales y colabora con universidades como Carnegie Mellon, Queen Mary y TU Berlin. 🌍 Ha publicado en IEEE Transactions on Intelligent Transportation Systems, Sensors y Pattern Recognition, consolidándose como un referente en el campo de la visión por computadora. 📜

Awards & Recognitions 🏅

🥇 Medalla “Juan López de Peñalver” 2017, otorgada por la Real Academia de Ingeniería. 📜 Reconocimiento por su contribución a la ingeniería española en el campo de la visión por computadora y análisis de video. 🏛️ Ha recibido financiación para múltiples proyectos de investigación europeos y nacionales. 🔬 Ha participado en iniciativas de innovación en videovigilancia y análisis de video para seguridad. 🚀 Sus contribuciones han sido publicadas en las principales conferencias y revistas científicas del área. 📚 Su trabajo ha sido citado más de 4500 veces y cuenta con un índice h de 16 en Google Scholar. 📊

Publications 

1. Rafael Martín-Nieto, Álvaro García-Martín, Alexander G. Hauptmann, and Jose. M.
Martínez: “Automatic vacant parking places management system using multicamera
vehicle detection”. IEEE Transactions on Intelligent Transportation Systems, Volume 20,
Issue 3, pp. 1069-1080, ISSN 1524-9050, March 2019.

2. Rafael Martín-Nieto, Álvaro García-Martín, Jose. M. Martínez, and Juan C. SanMiguel:
“Enhancing multi-camera people detection by online automatic parametrization using
detection transfer and self-correlation maximization”. Sensors, Volume 18, Issue 12, ISSN
1424-8220, December 2018.

3. Álvaro García-Martín, Juan C. SanMiguel and Jose. M. Martínez: “Coarse-to-fine adaptive
people detection for video sequences by maximizing mutual information”. Sensors,
Volume 19, Issue 4, ISSN 1424-8220, January 2019.

4. Alejandro López-Cifuentes, Marcos Escudero-Viñolo, Jesús Bescós and Álvaro GarcíaMartín: “Semantic-Aware Scene Recognition”. Pattern Recognition. Accepted February
2020.

5. Paula Moral, Álvaro García-Martín, Marcos Escudero Viñolo, Jose M. Martinez, Jesus
Bescós, Jesus Peñuela, Juan Carlos Martinez, Gonzalo Alvis: “Towards automatic waste
containers management in cities via computer vision: containers localization and geopositioning in city maps”. Waste Management, June 2022.

6. Javier Montalvo, Álvaro García-Martín, Jesus Bescós: “Exploiting Semantic Segmentation
to Boost Reinforcement Learning in Video Game Environments”. Multimedia Tools and
Applications. September 2022.

7. Paula Moral, Álvaro García-Martín, Jose M. Martinez, Jesus Bescós: “Enhancing Vehicle
Re-Identification Via Synthetic Training Datasets and Re-ranking Based on Video-Clips
Information”. Multimedia Tools and Applications. February 2023.

8. Roberto Alcover-Couso, Juan C. SanMiguel, Marcos Escudero-Viñolo and Alvaro GarciaMartin: “On exploring weakly supervised domain adaptation strategies for semantic
segmentation using synthetic data”. Multimedia Tools and Applications. February 2023.

9. Juan Ignacio Bravo Pérez-Villar, Álvaro García-Martín, Jesús Bescós, Marcos EscuderoViñolo: “Spacecraft Pose Estimation: Robust 2D and 3D-Structural Losses and
Unsupervised Domain Adaptation by Inter-Model Consensus”. IEEE Transactions on
Aerospace and Electronic Systems. August 2023.

10. Javier Montalvo, Álvaro García-Martín, José M. Martinez. “An Image-Processing Toolkit
for Remote Photoplethysmography”, Multimedia Tools and Applications. July 2024.

11. Juan Ignacio Bravo Pérez-Villar, Álvaro García-Martín, Jesús Bescós, Juan C. SanMiguel:
“Test-Time Adaptation for Keypoint-Based Spacecraft Pose Estimation Based on
Predicted-View Synthesis”. IEEE Transactions on Aerospace and Electronic Systems.
May 2024.

12. Kirill Sirotkin, Marcos Escudero-Viñolo, Pablo Carballeira, Álvaro García-Martín:
“Improved Transferability of Self-Supervised Learning Models Through Batch
Normalization Finetuning”. Applied Intelligence. Aug 2024.

13. Javier Galán, Miguel González, Paula Moral, Álvaro García-Martín, Jose M. Martinez:
“Transforming Urban Waste Collection Inventory: AI-Based Container Classification and
Re-Identification”. Waste Management, Feb 2025.