4.6 Article

Learning Local-Global Multiple Correlation Filters for Robust Visual Tracking with Kalman Filter Redetection

期刊

SENSORS
卷 21, 期 4, 页码 -

出版社

MDPI
DOI: 10.3390/s21041129

关键词

object tracking; correlation filter; convolutional neural networks; local-global collaborative strategy; Kalman filter

资金

  1. National Natural Science Foundation of China [61972056]
  2. Basic Research Fund of Zhongye Changtian International Engineering Co., Ltd. [2020JCYJ07]
  3. Double First-class International Cooperation and Development Scientific Research Project of Changsha University of Science and Technology [2019IC34]
  4. Postgraduate Training Innovation Base Construction Project of Hunan Province [2019-248-51]
  5. Postgraduate Scientific Research Innovation Fund of Hunan Province [CX20190695]

向作者/读者索取更多资源

The proposed local-global multiple correlation filters (LGCF) tracking algorithm in this paper achieves better performance in object tracking and effectively handles various challenges in the field.
Visual object tracking is a significant technology for camera-based sensor networks applications. Multilayer convolutional features comprehensively used in correlation filter (CF)-based tracking algorithms have achieved excellent performance. However, there are tracking failures in some challenging situations because ordinary features are not able to well represent the object appearance variations and the correlation filters are updated irrationally. In this paper, we propose a local-global multiple correlation filters (LGCF) tracking algorithm for edge computing systems capturing moving targets, such as vehicles and pedestrians. First, we construct a global correlation filter model with deep convolutional features, and choose horizontal or vertical division according to the aspect ratio to build two local filters with hand-crafted features. Then, we propose a local-global collaborative strategy to exchange information between local and global correlation filters. This strategy can avoid the wrong learning of the object appearance model. Finally, we propose a time-space peak to sidelobe ratio (TSPSR) to evaluate the stability of the current CF. When the estimated results of the current CF are not reliable, the Kalman filter redetection (KFR) model would be enabled to recapture the object. The experimental results show that our presented algorithm achieves better performances on OTB-2013 and OTB-2015 compared with the other latest 12 tracking algorithms. Moreover, our algorithm handles various challenges in object tracking well.

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