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Multi-Scale Anti-Occlusion Correlation Filters Object Tracking Method Based on Complementary Features

机译:基于互补特征的多尺度防闭锁相关滤波器对象跟踪方法

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摘要

Aiming to tackle the problem of tracking drift easily caused by complex factors during the tracking process, this paper proposes an improved object tracking method under the framework of kernel correlation filter. To achieve discriminative information that is not sensitive to object appearance change, it combines dimensionality-reduced Histogram of Oriented Gradients features and Lab color features, which can be used to exploit the complementary characteristics robustly. Based on the idea of multi-resolution pyramid theory, a multi-scale model of the object is constructed, and the optimal scale for tracking the object is found according to the confidence maps' response peaks of different sizes. For the case that tracking failure can easily occur when there exists inappropriate updating in the model, it detects occlusion based on whether the occlusion rate of the response peak corresponding to the best object state is less than a set threshold. At the same time, Kalman filter is used to record the motion feature information of the object before occlusion, and predict the state of the object disturbed by occlusion, which can achieve robust tracking of the object affected by occlusion influence. Experimental results show the effectiveness of the proposed method in handling various internal and external interferences under challenging environments.
机译:旨在解决在跟踪过程中容易造成的跟踪漂移的问题,在跟踪过程中,在核相关滤波器框架下提出了一种改进的物体跟踪方法。为了实现对对象外观变化不敏感的辨别信息,它结合了定向梯度特征和实验室颜色特征的维度减少的直方图,其可用于鲁棒地利用互补特性。基于多分辨率金字塔理论的思想,构建了对象的多尺度模型,并根据不同尺寸的置信率峰值峰值峰值找到跟踪对象的最佳比例。对于在模型中存在不适当的更新时,可以容易地发生跟踪失败的情况,基于对应于最佳对象状态的响应峰值的遮挡率是否小于设定阈值来检测遮挡。同时,卡尔曼滤波器用于在遮挡前记录对象的运动特征信息,并预测由遮挡的对象的状态,这可以实现受遮挡影响影响的物体的鲁棒跟踪。实验结果表明,在充满挑战环境下处理各种内部和外部干扰的方法的有效性。

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