61 / 2015-11-21 14:12:55
A long-term tracking model based on tracking failure detection and Weighted Random Forest
8430,tracking,multi-scale,weighted,failure
Draft Accepted
储 珺 / 江西省 南昌市 南昌航空大学 软件学院 计算机视觉研究所
朱 陶 / 江西省 南昌市 南昌航空大学 软件学院 计算机视觉研究所
缪 君 / 江西省 南昌市 南昌航空大学 软件学院 计算机视觉研究所
Compared to traditional visual tracking, long-term tracking appears to be more challenging since the target is likely to suffer more severe deformation, occlusion, scale change or move out of view scenarios. It is challenging to develop a robust and efficient target model. In this paper, we propose a robust model for long-term tracking in complex scenes. In order to achieve this goal, firstly, we extract multi-scale feature based on the illumination invariant color space to solve scale and illumination change of the target. For the purpose of reducing time consumption caused by the multi-scale feature, we adopt a random measurement matrix to project the high-dimensional multi-scale features onto a low-dimensional subspace. Secondly, we introduce a tracking Failure Detection Strategy(FDS) to decide whether the tracking is a failure which cause by occlusion, illumination change and situations when the target moves out of camera view. Finally, we proposed a Weighted Random Forest(WRF) classifier to retrieve the target position after the tracking failure situation, and the classifier is updated online, so that the performance of the model improves over time. Our proposed model performs favorably in complex scenes against conventional models in terms of robustness and time consumption.
Important Date
  • Conference Date

    May 21

    2016

    to

    May 22

    2016

  • Oct 30 2015

    Early Bird Registration

  • Mar 21 2016

    Draft paper submission deadline

  • Apr 01 2016

    Draft Paper Acceptance Notification

  • Apr 10 2016

    Final Paper Deadline

  • May 22 2016

    Registration deadline

Sponsored By
亚利桑那州立大学
查尔斯特大学
重庆环球联合科学技术研究院
韦洛尔理工大学
阿尔托大学
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