Robust Visual Tracking via Iterative Gradient Descent and Threshold Selection
- URL: http://arxiv.org/abs/2406.00589v1
- Date: Sun, 2 Jun 2024 01:51:09 GMT
- Title: Robust Visual Tracking via Iterative Gradient Descent and Threshold Selection
- Authors: Zhuang Qi, Junlin Zhang, Xin Qi,
- Abstract summary: We introduce a novel robust linear regression estimator, which achieves favorable performance when the error vector follows i.i.d Gaussian-Laplacian distribution.
In addition, we expend IGDTS to a generative tracker, and apply IGDTS-distance to measure the deviation between the sample and the model.
Experimental results on several challenging image sequences show that the proposed tracker outperformance existing trackers.
- Score: 4.978166837959101
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Visual tracking fundamentally involves regressing the state of the target in each frame of a video. Despite significant progress, existing regression-based trackers still tend to experience failures and inaccuracies. To enhance the precision of target estimation, this paper proposes a tracking technique based on robust regression. Firstly, we introduce a novel robust linear regression estimator, which achieves favorable performance when the error vector follows i.i.d Gaussian-Laplacian distribution. Secondly, we design an iterative process to quickly solve the problem of outliers. In fact, the coefficients are obtained by Iterative Gradient Descent and Threshold Selection algorithm (IGDTS). In addition, we expend IGDTS to a generative tracker, and apply IGDTS-distance to measure the deviation between the sample and the model. Finally, we propose an update scheme to capture the appearance changes of the tracked object and ensure that the model is updated correctly. Experimental results on several challenging image sequences show that the proposed tracker outperformance existing trackers.
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