Tao Chen | Object Detection and Recognition | Research Excellence Award

Dr. Tao Chen | Object Detection and Recognition | Research Excellence Award

Professor | Fudan University | China

Dr. Tao Chen is a leading researcher at Fudan University, specializing in deep learning and computer vision, with a focus on human motion understanding, 3D shape generation, and semantic segmentation. He has contributed to over 249 high-impact publications in top-tier venues including CVPR, NeurIPS, and IEEE Transactions, accumulating more than 6294 citations. His work integrates advanced neural architectures, motion diffusion, and cross-domain adaptation techniques, often in collaboration with international researchers such as G. Yu and W. Liu. Dr. Chen’s research has significant societal impact, advancing intelligent systems for medical imaging, autonomous perception, and interactive 3D applications, bridging fundamental AI research with practical real-world solutions.

Citation Metrics (Google Scholar)

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Citations
6294

Documents
249

h-index
41

🟦 Citations 🟥 Documents 🟩 h-index

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Featured Publications


Executing your commands via motion diffusion in latent space.

– In Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR) . (2023). Cited By : 580

TopFormer: Token pyramid transformer for mobile semantic segmentation.

-In Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR). (2022). Cited By: 388

b‑DARTS: Beta‑decay regularization for differentiable architecture search.

– In Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR). (2022). Cited By: 194

LL3DA: Visual interactive instruction tuning for omni‑3D understanding, reasoning, and planning.

– In Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR). (2024). Cited By: 178

Xiangfu Kong | BigData and LargescaleVision | Best Researcher Award

Dr. Xiangfu Kong | BigData and LargescaleVision | Best Researcher Award

Assistant Researcher | Zhejiang Lab | China

Dr. Xiangfu Kong is a distinguished researcher at Zhejiang Lab, specializing in intelligent transportation systems (ITS), spatiotemporal data analytics, and urban mobility optimization. His work bridges computer science, artificial intelligence, and transportation engineering to develop data-driven models that enhance mobility efficiency safety, and sustainability in smart cities.With an Publications 6  h-index of 3, and 67 citations across recognized publications, Dr. Kong has made notable scholarly contributions to the field. He has published six peer-reviewed research articles, including influential works such as “Measuring Traffic Congestion with Taxi GPS Data and Travel Time Index and  A Scenario-Based Map-Matching Algorithm for Complex Urban Road Networks. His recent studies explore flood risk mapping, travel time reliability, and natural language processing for urban data interpretation, showcasing his interdisciplinary expertise.Dr. Kong’s research projects often involve large-scale real-world data, particularly GPS-based urban mobility and hydrological data, integrating AI algorithms and Bayesian frameworks to model and predict transportation dynamics under diverse conditions. His studies have direct implications for urban policy-making, disaster management, and infrastructure resilience.He has actively collaborated with industry and academic partners to design computational models that assist in traffic monitoring, path planning, and flood management, contributing to sustainable urban development initiatives. Dr. Kong’s innovative use of AI for understanding urban systems highlights his dedication to applying research outcomes to societal benefit.In addition to his publications, Dr. Kong contributes to the broader scientific community through editorial and peer-review roles in transportation and data science journals. His ongoing work in data-driven transportation intelligence and urban informatics positions him as a promising researcher contributing to the next generation of smart mobility systems.Through his research excellence and cross-disciplinary collaborations, Dr. Xiangfu Kong continues to push the boundaries of how AI and data analytics can transform urban transportation, improve public safety, and drive global sustainability efforts.

Profiles: Google Scholar | ORCID | Scopus 

Featured Publications

1. Kong, X., Yang, J., & Yang, Z. (2015). Measuring traffic congestion with taxi GPS data and travel time index. Proceedings of the CICTP 2015, 3751–3762. Cited By : 35

2. Kong, X., & Yang, J. (2019). A scenario-based map-matching algorithm for complex urban road network. Journal of Intelligent Transportation Systems, 23(6), 617–631.
Cited By : 19

3. Kong, X., Yang, J., Qiu, J., Zhang, Q., Chen, X., Wang, M., & Jiang, S. (2022). Post‐event flood mapping for road networks using taxi GPS data. Journal of Flood Risk Management,  Cited By : 8

4. Xiangfu, K., Bo, D., Xu, K., & Yongliang, T. (2023). Text classification model for livelihood issues based on BERT: A study based on hotline compliant data of Zhejiang province. Acta Scientiarum Naturalium Universitatis Pekinensis, 59(3), 456–466. Cited By : 3

5. Kong, X., & Yang, J. (2016). Path planning with information on travel time reliability. Proceedings of the CICTP 2016, 99–107. Cited By :  2

6. Kong, X., Yang, J., Xu, K., Dong, B., & Jiang, S. (2023). A Bayesian updating framework for calibrating hydrological parameters of road network using taxi GPS data. Hydrology and Earth System Sciences Discussions, 1–25.

Dr. Xiangfu Kong nresearch advances data-driven intelligent transportation and urban informatics, fostering safer, more efficient, and sustainable mobility systems. His innovative integration of AI, GPS analytics, and hydrological modeling contributes to scientific progress, climate-resilient infrastructure, and smart city innovation with lasting global impact.

Madhuri Rao | Machine Learning | Best Researcher Award

Dr. Madhuri Rao | Machine Learning | Best Researcher Award

Senior Assistant Professor | MIT World Peace University | India

Dr. Madhuri Rao is a dedicated researcher and academic in computer science with expertise in wireless sensor networks, Internet of Things, artificial intelligence, blockchain, and cybersecurity, with her current work focusing on deep learning, cloud security, and healthcare applications. She earned her Ph.D. in Computer Science and Engineering from Biju Patnaik University of Technology, where her research emphasized energy-efficient object tracking in wireless sensor networks. Over her career, she has gained extensive professional experience as a faculty member, academic coordinator, research supervisor, and editorial board member, contributing significantly to both teaching and research. She has authored and co-authored numerous publications in reputed journals and conferences, including IEEE, Springer, Elsevier, and Scopus-indexed platforms, along with patents and book chapters that highlight her innovative approach. Her research interests span interdisciplinary applications of advanced technologies to address challenges in security, healthcare, and sustainability, with ongoing involvement in collaborative projects and international initiatives. She has received recognition through awards such as best paper honors and a best research scholar award, underscoring her contributions to the academic community. Her research skills include problem-solving, experimental design, data analysis, and guiding students at undergraduate, postgraduate, and doctoral levels, coupled with active roles as session chair, track chair, and guest lecturer in international conferences. She is also a life member of professional societies and holds certifications that strengthen her academic profile. Her impactful contributions are reflected in 116 citations and an h-index of 7.

Profile: Google Scholar | ORCID | ResearchGate | LinkedIn

Featured Publications

  1. Rao, M., & Kamila, N. K. (2021). Cat swarm optimization based autonomous recovery from network partitioning in heterogeneous underwater wireless sensor network. International Journal of System Assurance Engineering and Management, 1–15.

  2. Rao, M., Kamila, N. K., & Kumar, K. V. (2016). Underwater wireless sensor network for tracking ships approaching harbor. 2016 International Conference on Signal Processing, Communication, Power and Embedded System (SCOPES), 1098–1102. IEEE.
  3. Rao, M., & Kamila, N. K. (2018). Spider monkey optimisation based energy efficient clustering in heterogeneous underwater wireless sensor networks. International Journal of Ad Hoc and Ubiquitous Computing, 29(1–2), 50–63.

  4. Chaudhury, P., Rao, M., & Kumar, K. V. (2009). Symbol based concatenation approach for text to speech system for Hindi using vowel classification technique. 2009 World Congress on Nature & Biologically Inspired Computing (NaBIC), 1393–1396. IEEE.

  5. Kumar, K. V., Kumari, P., Rao, M., & Mohapatra, D. P. (2022). Metaheuristic feature selection for software fault prediction. Journal of Information and Optimization Sciences, 43(5), 1013–1020.

Shijie Li | Embodied AI | Best Researcher Award

Dr. Shijie Li | Embodied AI | Best Researcher Award

Scientist | A*STAR Institute for Infocomm Research | Singapore

Dr. Shijie Li is a computer vision researcher with expertise in 3D perception, embodied AI, and vision-language models, contributing to the development of intelligent systems for real-world applications. He earned his Ph.D. in Computer Science from Bonn University under the supervision of Prof. Juergen Gall, following a master’s degree from Nankai University and a bachelor’s degree in Automation Engineering from the University of Electronic Science and Technology of China. His professional experience includes research positions and internships at A*STAR Singapore, Qualcomm AI Research in Amsterdam, Intel Labs in Munich, Alibaba DAMO Academy in China, and Technische Universität München in Germany, showcasing strong international collaborations and applied research expertise. His research interests lie in 3D scene understanding, motion forecasting, vision-language integration, semantic segmentation, and novel view synthesis. He has published in leading journals and conferences such as ICCV, CVPR, IEEE TPAMI, IEEE TNNLS, WACV, BMVC, ICRA, and IROS, reflecting impactful and consistent contributions. His academic excellence has been recognized through scholarships and awards including the Fortis Enterprise Scholarship, National Inspirational Scholarship, First Class Scholarship, and Outstanding Graduate Award. He has also served as a reviewer for top journals and conferences such as IEEE TPAMI, IJCV, CVPR, ICCV, ECCV, NeurIPS, and AAAI, reflecting his active role in the research community. His skills include deep learning, diffusion models, semantic and motion forecasting, vision-language modeling, and embodied AI, with a focus on interdisciplinary innovation. His research impact is reflected in 183 citations, 10 documents, and an h-index of 7.

Profiles: Google Scholar | Scopus | ORCID | LinkedIn

Featured Publications

Li, S., Abu Farha, Y., Liu, Y., Cheng, M., & Gall, J. (2023). MS-TCN++: Multi-stage temporal convolutional network for action segmentation. IEEE Transactions on Pattern Analysis and Machine Intelligence, 45(6), 6647–6658.

Chen, X., Li, S., Mersch, B., Wiesmann, L., Gall, J., Behley, J., & Stachniss, C. (2021). Moving object segmentation in 3D LiDAR data: A learning-based approach exploiting sequential data. IEEE Robotics and Automation Letters, 6(4), 6529–6536.

Qiu, Y., Liu, Y., Li, S., & Xu, J. (2020). MiniSeg: An extremely minimum network for efficient COVID-19 segmentation. Proceedings of the AAAI Conference on Artificial Intelligence, 34(11), 13180–13187.

Li, S., Chen, X., Liu, Y., Dai, D., Stachniss, C., & Gall, J. (2021). Multi-scale interaction for real-time LiDAR data segmentation on an embedded platform. IEEE Robotics and Automation Letters, 7(2), 738–745.

Li, S., Zhou, Y., Yi, J., & Gall, J. (2021). Spatial-temporal consistency network for low-latency trajectory forecasting. Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV), 10737–10746.

Kexin Bao | Continual Learning | Best Researcher Award

Dr. Kexin Bao | Continual Learning | Best Researcher Award

Student at The Institute of Information Engineering, School of Cyber Security at University of Chinese Academy of Sciences, China

Kexin Bao is a focused and innovative researcher currently pursuing her Ph.D. at the Institute of Information Engineering, School of Cyber Security, University of Chinese Academy of Sciences. Her research primarily revolves around machine learning and computer vision, with specialization in few-shot class-incremental learning and weakly supervised small object detection. Through her contributions, she aims to address the challenges of enabling AI models to learn efficiently with minimal data and annotations. Kexin has actively participated in six research projects and authored six peer-reviewed SCI/Scopus-indexed journal publications, with a total citation count of 62. Her work includes the design of the Prior Knowledge-Infused Neural Network (PKI), which balances performance and computational efficiency. She collaborates with esteemed researchers like Shiming Ge and continues to demonstrate a high level of commitment to innovation and scholarly excellence. Kexin Bao’s work holds promise for practical applications in AI and has the potential to impact academia and industry alike.

Professional Profile 

Scopus Profile | ORCID Profile 

Education

Kexin Bao is currently pursuing her Doctor of Philosophy (Ph.D.) in Cyber Security and Information Engineering at the prestigious University of Chinese Academy of Sciences. She is enrolled at the Institute of Information Engineering, which is known for its excellence in cutting-edge research in computer science and cybersecurity. Her academic focus lies in advanced topics within machine learning and computer vision, particularly in areas such as few-shot learning, incremental learning, and object detection. Prior to her Ph.D., Kexin likely completed a Bachelor’s and Master’s degree in a relevant field, which laid the foundation for her research career, though those details are not explicitly mentioned in her profile. Her academic training has equipped her with the theoretical knowledge and practical skills needed to tackle complex real-world problems in artificial intelligence. Her ongoing doctoral studies not only refine her technical abilities but also enable her to contribute meaningfully to the global research community.

Professional Experience

As a Ph.D. student, Kexin Bao’s professional experience is rooted in academic research, with a strong focus on machine learning and computer vision. Although she does not yet have experience in industry or consultancy projects, she has participated in six significant research initiatives that address challenges in artificial intelligence, particularly in data-efficient learning models. Her work involves both independent and collaborative research, including partnerships with renowned scholars like Shiming Ge, Daichi Zhang, and Fanzhao Lin. While still in the early stages of her professional career, she has already contributed to six SCI/Scopus-indexed publications and one patent submission, reflecting her active role in advancing knowledge and technology. Though she has not yet undertaken formal leadership roles or teaching positions, her ability to carry out complex research projects demonstrates a high level of professionalism and expertise. Her growing research profile suggests that she is well-positioned to transition into impactful academic or industry roles in the future.

Research Interest

Kexin Bao’s research interests lie at the intersection of machine learning, computer vision, and artificial intelligence, with a specific focus on Few-Shot Class-Incremental Learning (FSCIL) and Weakly Supervised Small Object Detection. She is deeply interested in developing intelligent systems that can learn continuously from limited data, which is crucial for real-world applications where large annotated datasets are often unavailable. Her work on the Prior Knowledge-Infused Neural Network (PKI) and its variants (PKIV-1, PKIV-2) demonstrates her commitment to enhancing learning efficiency and minimizing resource consumption. She aims to create models that not only generalize well but also adapt quickly to new tasks with minimal retraining. These interests align closely with future directions in sustainable AI, autonomous systems, and edge computing. Kexin continues to explore methods that combine theoretical advancements with practical deployment possibilities, aiming to bridge the gap between academic research and real-world applications in intelligent automation and perception systems.

Award and Honor

Though early in her academic journey, Kexin Bao has already achieved commendable recognition through her contributions to research in computer vision. She has authored six peer-reviewed journal publications indexed in SCI and Scopus, and her work has been cited 62 times, indicating growing academic impact. Additionally, she has filed one patent based on her original research, a significant milestone for any early-career researcher. These achievements reflect both innovation and practical relevance in her work. She has also collaborated with prominent researchers, which further adds to her credibility and visibility in the research community. While she has not yet received named awards or honors beyond her publication and patent successes, her nomination for the Best Researcher Award is itself a testament to her academic excellence, research contribution, and future potential. With continued progress, she is well-positioned to receive further accolades and recognition at national and international levels in the near future.

Research Skill

Kexin Bao possesses a robust set of research skills that span both theoretical understanding and practical implementation in machine learning and computer vision. She is proficient in developing deep learning models and has a strong command of techniques related to few-shot learning, incremental learning, and weak supervision. Her work demonstrates advanced capabilities in model optimization, neural network design, and experimental benchmarking. Kexin has conducted extensive experiments on recognized datasets, validating her models through comparisons with state-of-the-art techniques. She is adept at using research tools, coding in frameworks such as PyTorch or TensorFlow, and performing data preprocessing and analysis. Her development of the Prior Knowledge-Infused Neural Network and its variants highlights her problem-solving ability and innovation mindset. She is also skilled in academic writing, contributing to multiple peer-reviewed journals. These research skills, combined with her ability to work collaboratively and manage projects independently, position her as a capable and resourceful young researcher.

Publications Top Notes

Title: DB-FSCIL: Few-Shot Class-Incremental Learning Using Dual Bridges
Authors: Kexin Bao, Fanzhao Lin, Ruyue Liu, Shiming Ge
Year: 2025
Type: Book Chapter

Title: PKI: Prior Knowledge-Infused Neural Network for Few-Shot Class-Incremental Learning
Authors: Kexin Bao, Fanzhao Lin, Zichen Wang, Yong Li, Dan Zeng, Shiming Ge
Year: 2025 (Expected December)
Type: Journal Article (Neural Networks)

Title: Divide and Conquer: Static-Dynamic Collaboration for Few-Shot Class-Incremental Learning
Authors: Kexin Bao, Daichi Zhang, Yong Li, Dan Zeng, Shiming Ge
Year: 2025
Type: Conference Paper

Title: Learning Contrast-Enhanced Shape-Biased Representations for Infrared Small Target Detection
Authors: Fanzhao Lin, Kexin Bao, Yong Li, Dan Zeng, Shiming Ge
Year: 2024
Type: Journal Article (IEEE Transactions on Image Processing)

Title: Learning Shape-Biased Representations for Infrared Small Target Detection
Authors: Fanzhao Lin, Shiming Ge, Kexin Bao, Chenggang Yan, Dan Zeng
Year: 2024
Type: Journal Article (IEEE Transactions on Multimedia)

Title: Federated Learning with Label-Masking Distillation
Authors: Jianghu Lu, Shikun Li, Kexin Bao, Pengju Wang, Zhenxing Qian, Shiming Ge
Year: 2023
Type: Conference Paper

Conclusion

Kexin Bao is a deserving candidate for the Best Researcher Award due to her impactful contributions in the field of computer vision, particularly in few-shot class-incremental learning and weakly supervised small object detection. Her innovative work, including the development of the Prior Knowledge-Infused Neural Network (PKI), addresses real-world challenges in AI and has gained recognition through multiple SCI-indexed publications and citations. Her dedication to advancing research, collaboration with leading experts, and potential to drive future breakthroughs highlight both her academic excellence and her value to the broader research community. With continued growth in global engagement and leadership activities, she holds strong potential to become a leading figure in her field.