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Multi-object detection and tracking via kernel covariance factorization in thermal video

机译:热视频中基于核协方差分解的多目标检测和跟踪

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This paper addresses the problem of joint object detection and tracking in thermal videos. Object detection is formulated as a sparse factorization task of a properly defined kernel covariance matrix. The support of these estimated factors is used to determine the indices of the pixels that form each object. A coordinate descent approach is utilized to determine the sparse factors, and extract the object pixels. For each object, the centroid pixel is subsequently tracked via Kalman filtering. A novel interplay between the sparse kernel covariance factorization scheme along with Kalman filtering is proposed to enable joint object detection and tracking, while a divide and conquer strategy is put forth to reduce computational complexity in tracking. Numerical tests demonstrate the improved tracking performance over existing alternatives.
机译:本文解决了热视频中的联合目标检测和跟踪问题。对象检测被公式化为适当定义的内核协方差矩阵的稀疏分解任务。这些估计因子的支持用于确定形成每个对象的像素的索引。利用坐标下降法确定稀疏因子,并提取目标像素。对于每个对象,质心像素随后通过卡尔曼滤波进行跟踪。提出了一种稀疏核协方差分解方案与卡尔曼滤波之间的新颖相互作用,以实现联合目标的检测和跟踪,同时提出了一种分而治之的策略来降低跟踪的计算复杂度。数值测试表明,与现有替代方案相比,跟踪性能有所提高。

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