Wassim BouachirGuillaume-Alexandre Bilodeau
This paper introduces a novel keypoint-based method for visual object tracking. To represent the target, we use a new model combining color distribution with keypoints. The appearance model also incorporates the spatial layout of the keypoints, encoding the object structure learned during tracking. With this multi-feature appearance model, our Structure-Aware Tracker (SAT) estimates accurately the target location using three main steps. First, the search space is reduced to the most likely image regions with a probabilistic approach. Second, the target location is estimated in the reduced search space using deterministic keypoint matching. Finally, the location prediction is corrected by exploiting the keypoint structural model with a voting-based method. By applying our SAT on several tracking problems, we show that location correction based on structural constraints is a key technique to improve prediction in moderately crowded scenes, even if only a small part of the target is visible. We also conduct comparison with a number of state-of-the-art trackers and demonstrate the competitiveness of the proposed method.
Xiaofeng LuJunhao ZhangLi SongRui LeiHengli LuNam Ling
Guang ShuAli DehghanOmar OreifejEmily HandMubarak Shah
Tianzhu ZhangKui JiaChangsheng XuYi MaNarendra Ahuja
Khizer MehmoodAbdul JalilAhmad AliBaber KhanMaria MuradWasim KhanYigang He