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Improved target tracking algorithm based on kernelized correlation filter

机译:基于核化相关滤波器的改进的目标跟踪算法

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We propose an improved object tracking algorithm based on kernelized correlation filter (KCF), which can overcome the drawback of traditional KCF algorithms in that they cannot effectively adapt to target-scale variations and target occlusion in tracking. First, the target-scale pyramid is built, whose histogram of oriented gradients feature extracted of every layer multiplied by the correlation filters; the maximum response of current scale of the filters is the best target scale. In addition, the improved algorithm is combined with the improved correlation filter framework, and the background information around the target is appropriately increased. When the target is occluded, the background information can be effectively used to track the target. The proposed algorithm is validated on the benchmark evaluation and compared with the traditional algorithms, such as KCF and circulation structure of tracking-by-detection with kernel. The results indicate that our tracking accuracy can reach 66.9% and the success rate can be 58.2. When the target is scale variation, the accuracy and success rate increase by 1.1% and 10.3%, respectively, compared with KCF. If the tracked target is occluded, a second improved algorithm is compared with the detection algorithm which only adds the scale detection, the tracking accuracy increases by 8%, and the success rate increases by 4.9%. (C) 2019 SPIE and IS&T
机译:我们提出了一种基于内核相关滤波器(KCF)的改进的对象跟踪算法,其可以克服传统KCF算法的缺点,因为它们不能有效地适应跟踪时的目标尺度变化和目标遮挡。首先,构建目标尺度金字塔,其针对各层提取的面向梯度特征的直方图乘以相关滤波器;滤波器的当前规模的最大响应是最佳目标规模。另外,改进的算法与改进的相关滤波器框架组合,并且适当地增加了目标周围的背景信息。当目标被遮挡时,可以有效地使用背景信息来跟踪目标。在基准评估上验证了所提出的算法,与传统算法相比,例如KCF和用内核进行跟踪逐循环结构。结果表明,我们的跟踪精度可达到66.9%,成功率可以为58.2。与KCF相比,当目标是规模变化时,精度和成功率分别增加1.1%和10.3%。如果跟踪目标被遮挡,则将第二种改进的算法与仅增加刻度检测的检测算法进行比较,跟踪精度增加8%,成功率增加了4.9%。 (c)2019 SPIE和IS&T

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