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Some Advances in Human Motion Analysis |
LI Hong-Song, LI Da |
College of Information Science and Technology, Beijing Normal University, Beijing 100875 |
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Abstract Visual analysis includes moving object detection, moving object classification, human tracking and activity recognition and description. It has broad application prospects in many fields, such as smart vision surveillance, visual reality, intelligent human-computer interface, video compression and computer-aided clinical diagnosis. A comprehensive survey on vision-based human motion analysis is presented from the above four aspects, and the challenges and future directions are discussed.
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Received: 07 November 2007
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