Jing Liu - Image and Video Processing - Best Researcher Award
Tianjin University - China
AUTHOR PROFILE
GOOGLE SCHOLAR
Based on the provided information about Jing Liu, he appears to be a strong candidate for the Research for Community Impact Award for several reasons:
ACADEMIC ACHIEVEMENTS
Jing Liu has an impressive academic track record, including notable awards such as the Best Poster Award at the 20th International Forum of Digital Multimedia Communication in 2023, the Special Award of the Tianjin Science and Technology Progress Award in 2021, and the Prize Paper Award Runner-up of IEEE Transactions on Multimedia in 2021. These accolades highlight his significant contributions to the fields of information and communication engineering, particularly in multimedia and image processing.
EDUCATIONAL BACKGROUND
Jing Liu holds a Ph.D. in Information and Communication Engineering from Shanghai Jiao Tong University, one of China's top universities. His education was further enriched by his time as a visiting scholar at the Department of Computer Science and Engineering at SUNY Buffalo. This diverse educational background under the guidance of prominent advisors like Xiaokang Yang, Guangtao Zhai, and Chang Wen Chen has provided him with a solid foundation in his field.
PROFESSIONAL SERVICE AND LEADERSHIP
Jing Liu has demonstrated leadership and dedication to his field through various roles in academic service. He has served as an Associate Editor for Elsevier’s "Displays" journal since 2021 and as a Guest Editor for a Special Issue in Image and Vision Computing in 2024. His role as Chair of the 3rd Excellent Doctoral Forum of the China Society of Image and Graphics in 2023 and his involvement in organizing and chairing numerous workshops and conferences underscore his commitment to advancing research and fostering academic communities.
RESEARCH AND INNOVATION
Jing Liu's research focuses on cutting-edge topics in image and video processing, including facial micro-expression recognition, video salient object detection, and image bit-depth enhancement using neural networks. His publications, such as "Key Facial Components Guided Micro-Expression Recognition Based on First & Second-Order Motion" and "DS-Net: Dynamic Spatiotemporal Network for Video Salient Object Detection," demonstrate his innovative approach to solving complex problems in digital multimedia communication and image processing.
COMMUNITY IMPACT
Jing Liu’s work has significant implications for the broader community, particularly in enhancing digital communication and imaging technologies. His research in micro-expression recognition can be applied in areas such as security, psychology, and human-computer interaction, potentially improving mental health assessments and surveillance systems. His contributions to video salient object detection and image enhancement also have practical applications in various industries, including entertainment, healthcare, and scientific research, thereby benefiting society at large.
RECOGNITION AND PEER REVIEW
Jing Liu is recognized as an advanced member of the China Computer Federation and has received numerous awards for his work. His role as a reviewer for prestigious journals like IEEE TPAMI, TNNLS, TIP, TMM, and TCSVT, as well as his involvement in program committees for top conferences, speaks to his expertise and the high regard in which he is held by his peers.
CONCLUSION
Jing Liu's extensive academic achievements, innovative research, professional service, and the broader impact of his work make him a highly suitable candidate for the Research for Community Impact Award. His contributions have not only advanced academic knowledge but also provided practical benefits to the community, aligning perfectly with the award's criteria.
NOTABLE PUBLICATION
Key Facial Components Guided Micro-Expression Recognition Based on First & Second-Order Motion 2021 (21)
BE-CALF: bit-depth enhancement by concatenating all level features of DNN 2019 (28)
DS-Net: Dynamic Spatiotemporal Network for Video Salient Object Detection 2020 (20)
Recurrent conditional generative adversarial network for image deblurring 2018 (27)