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Correlation Filter Tracking Algorithm Based on Spatio-Temporal Context

机译:基于时空上下文的相关滤波跟踪算法

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Object tracking has been widely used in artificial intelligence, military reconnaissance, security monitoring and other fields. It has become a research hotspot of computer vision. To handle the drift problem in the presence of occlusions, a tracker combined with spatio-temporal context information and correlation filter is proposed in this paper. HOG (Histogram of Oriented Gradient), CN (Color Name) and gray features are extracted to learn the correlation filter. Meanwhile, the spatio-temporal context model is trained. The response map of correlation filter and spatio-temporal context model are normalized and fused. Experimental results show that the proposed algorithm can accurately track the object, and has better performance in terms of successful rate, center position error and distance precision.
机译:对象跟踪已广泛用于人工智能,军事侦察,安全监测和其他领域。它已成为计算机愿景的研究热点。为了在闭塞存在下处理漂移问题,本文提出了一种跟踪器与时空上下文信息和相关滤波器结合。提取猪(取向梯度的直方图),CN(颜色名称)和灰色特征以学习相关滤波器。同时,培训时空上下文模型。相关滤波器和时空上下文模型的响应图是归一化和融合的。实验结果表明,该算法可以准确地跟踪对象,并在成功的速率,中心位置误差和距离精度方面具有更好的性能。

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