Tracking-by-Learning-Semantic-Scene
Authors: Xuan Song, Xiaowei Shao, Huijing Zhao, Jinshi Cui, Ryosuke Shibasaki and Hongbin Zha
Abstract:
Learning the knowledge of scene structure and tracking
a large number of targets are both active topics of computer
vision in recent years, which plays a crucial role in surveil-
lance, activity analysis, object classification and etc. In
this paper, we propose a novel system which simultaneously
performs the Learning-Semantic-Scene and Tracking, and
makes them supplement each other in one framework. The
trajectories obtained by the tracking are utilized to continu-
ally learn and update the scene knowledge via an online un-
supervised learning. On the other hand, the learned knowl-
edge of scene in turn is utilized to supervise and improve
the tracking results. Therefore, this “adaptive learning-
tracking loop” can not only perform the robust tracking in
high density crowd scene, dynamically update the knowl-
edge of scene structure and output semantic words, but also
ensures that the entire process is completely automatic and
online. We successfully applied the proposed system into the
JR subway station of Tokyo, which can dynamically obtain
the semantic scene structure and robustly track more than
150 targets at the same time.
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