跟踪中基于相关滤波的改进自适应模板更新策略

Jiuhong Jiang, An Zhe, Xiaodong Wang, Zhiqiang Zhou, Lingjuan Miao
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引用次数: 0

摘要

在目标跟踪中,采用固定学习率的线性插值更新模型。传统的模板更新方法在处理复杂的环境时不能令人满意。为了防止丢失目标,提高鲁棒性,本文创造性地采用归一化峰值旁瓣比(NPSR)建立目标遮挡判断机制。以NPSR为置信度,根据置信度设置所有历史模板的权重。因此,本地历史可靠性最高的过滤模板与原有的更新机制相融合。然后,根据目标的当前状态自适应调整模板更新过程中的学习率。基于OTB100数据集,将改进的自适应模板更新策略应用于KCF (Kernel Correlation Filter)跟踪算法。结果表明,该方法对相关滤波跟踪算法具有重要的研究和应用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved adaptive template updating strategy based on correlation filter in tracking
Linear interpolation is adopted to update model with a fixed learning rate in target tracking. The traditional template update method is not satisfactory when dealing with complex environments. In order to prevent losing the target and improve the robustness, this paper creatively uses the NPSR (normalized peak side lobe ratio) to establish a target occlusion judgment mechanism. Taking the NPSR as the confidence, the weights of all historical templates are set according to the confidence. Therefore, the filtering template with the highest local historical reliability is fused with the original update mechanism. Then, the learning rate in the template update process is adaptively adjusted according to the current state of the target. Based on the OTB100 datasets, the improved adaptive template update strategy is applied to the KCF (Kernel Correlation Filter) tracking algorithm. The results show that our method has important research and application value for the correlation filter tracking algorithm.
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