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Environmental Perception with Spatial Regularization Correlation Filter for Visual Tracking
Affiliation:1. Federal University of Espírito Santo/UFES, Department of Rural Engineering, Alto Universitário, s/n, 29500-000, Alegre, ES, Brazil;2. Federal Institute of Espírito Santo, Campus Itapina, BR 259, km 70, CEP 29709-910 Colatina/Itapina, ES, Brazil;3. Federal Institute of Espírito Santo, Campus Alegre, BR 482, km 7, CEP 29500-000 Alegre/Rive, ES, Brazil;4. Federal University of Espírito Santo/UFES, Department of Forest Engineering, Av. Carlos Lidemberg, s/n, 29550-000 Jerônimo Monteiro, ES, Brazil;5. Federal University of Viçosa/UFV, Department of Chemistry, Av. Peter Henry Rolfs, s/n, 36570-000, Viçosa, MG, Brazil;6. Federal University of Viçosa/UFV, Department of Forest Engineering, Av. Peter Henry Rolfs, s/n, 36570-000 Viçosa, MG, Brazil
Abstract:With the introduction of correlation filtering (CF), the performance of visual object tracking is significantly improved. Circular shifts collecting samples is a key component of the CF tracker, and it also causes negative boundary effects. Most trackers add spatial regularization to alleviate boundary effects well. However, these trackers ignore the effect of environmental changes on tracking performance, and the filter discriminates poorly in the background interference. Here, to break these limitations, we propose a new correlation filter model, namely Environmental Perception with Spatial Regularization Correlation Filter for Visual Tracking. Specifically, we use the Average Peak to Correlation Energy (APCE) and the response value error between the two frames together to perceive environmental changes, which adjusts the learning rate to make the template more adaptable to environmental changes. To enhance the discriminatory capability of the filter, we use real background information as negative samples to train the filter model. In addition, the introduction of the regular term destroys the closed solution of CF, and this problem can be effectively solved by the use of the alternating direction method of multipliers (ADMM). Extensive experimental evaluations on three large tracking benchmarks are performed, which demonstrate the good performance of the proposed method over some of the state-of-the-art trackers.
Keywords:Visual object tracking  Correlation filter  Environmental Perception  Adaptive learning rate
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