Distracter-aware correlation filter tracking

Xiaohuan Lu, Zhenyu He
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Abstract

We propose a distracter-aware Correlation Filters (CF) tracking algorithm, which exploits the information of dis-tracters to enhance the robustness of the tracker. Although most existing correlation filters based trackers achieve accurate tracking results, they may be less effective when similar distracters appear in the background. To this end, the proposed algorithm not only take the information of the target into consideration but also pay attention to the information of the distracters in the background. We first detect the distracters based on the response of CF model and then design a label map based on the information of the detected distracters. Unlike most existing CF based trackers which direct use a Gaussian shape label map, the proposed algorithm design a distracter-aware label map which makes the trained CF model effective to handle distracters. The proposed algorithm has several compelling advantages: it detects distracters, captures the discriminative information, which is crucial for robust tracking, enhances the robustness. We evaluate our proposed algorithm on the public OTB datasets, which including 50 sequences, and compare it with several state-of-the-art trackers. The comparable results show the effectiveness of the proposed algorithm.
干扰感知相关滤波器跟踪
提出了一种干扰感知相关滤波器(CF)跟踪算法,该算法利用干扰信息增强跟踪器的鲁棒性。虽然现有的大多数基于相关滤波器的跟踪器都能获得准确的跟踪结果,但当背景中出现类似的干扰物时,它们的效果可能会降低。为此,本文提出的算法既考虑了目标的信息,又关注了背景中干扰物的信息。我们首先根据CF模型的响应来检测干扰物,然后根据检测到的干扰物信息设计标签图。与大多数基于CF的跟踪器直接使用高斯形状标签映射不同,该算法设计了一个干扰物感知标签映射,使训练好的CF模型能够有效地处理干扰物。该算法具有检测干扰物、捕获对鲁棒跟踪至关重要的判别信息、增强鲁棒性等显著优点。我们在包括50个序列的公开OTB数据集上评估了我们提出的算法,并将其与几种最先进的跟踪器进行了比较。对比结果表明了该算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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