A Mutli-feature Correlation Filter Tracker with Different Hash Algorithm

Sixian Zhang, Yi Yang, Meng Zhang, Pengbo Mi
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Abstract

The discriminative correlation filter (DCF) does not work well in complex tracking scenarios. In order to improve the accuracy of object tracking, a new correlation filter tracker is proposed. We use the different hash algorithm to screen candidate samples, reduce the number of negative samples and improve the speed and accuracy of object tracking; combine the HOG feature with color histogram feature to acquire a robust object appearance model; design an adaptive fusion function to fuse the two features to obtain a more discriminative feature and improve the discriminability of the filter. Experiments on OTB2015 show that the proposed tracker has good accuracy in complex tracking scenes such as fast motion, background clutter, illumination variation, scale variation, etc.
不同哈希算法的多特征相关滤波跟踪器
判别相关滤波器(DCF)在复杂的跟踪场景下不能很好地工作。为了提高目标跟踪的精度,提出了一种新的相关滤波跟踪器。采用不同的哈希算法筛选候选样本,减少了负样本数量,提高了目标跟踪的速度和精度;将HOG特征与颜色直方图特征相结合,得到鲁棒的目标外观模型;设计一种自适应融合函数,将这两种特征融合在一起,以获得更具判别性的特征,提高滤波器的判别能力。在OTB2015上的实验表明,该跟踪器在快速运动、背景杂波、光照变化、尺度变化等复杂跟踪场景下具有良好的精度。
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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