基于直方图的目标跟踪偏微分方程

P. Li, Lijuan Xiao
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引用次数: 3

摘要

传统的基于颜色直方图的对象跟踪只能表示矩形或椭圆的对象,对形状复杂或非刚性运动的对象跟踪能力非常有限。为了解决这个问题,我们将基于直方图的跟踪表述为基于杰森-香农散度的函数优化问题,该散度是有界的、对称的和真正的度量。函数的优化包括寻找可能非常复杂形状的候选图像区域,其颜色分布与已知目标分布最相似。通过使用形状导数和变分导数两种不同的技术(分别在第2节和附录中),我们推导了描述物体轮廓演变的偏微分方程(PDE)。采用水平集算法计算PDE的解。实验表明,该方法具有全局收敛性,能够跟踪复杂形状和/或高度非刚性运动的目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Histogram-Based Partial Differential Equation for Object Tracking
Traditional object tracking based on color histograms can only represent objects with rectangles or ellipses, thus having very limited ability to follow objects with complex shapes or with highly non-rigid motion. In addressing this problem, we formulate histogram-based tracking as a functional optimization problem based on Jesson-Shannon divergence that is bounded, symmetric and a true metric. Optimization of the functional consists in searching for a candidate image region of possibly very complex shape, whose color distribution is the most similar to the known, target distribution. By using two different techniques of shape derivative and variational derivative (in section 2 and appendix respectively), we derive the partial differential equation (PDE) that describes the evolution of the object contour. Level set algorithm is used to compute the solution of the PDE. Experiments show that the proposed work is globally convergent and can track objects with complex shapes and/or with highly non-rigid motion.
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