快速双周期水平集跟踪与狭窄的背景感知

Yaochen Li, Yuanqi Su, Yuehu Liu
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引用次数: 3

摘要

在具有运动背景的视频序列中,前景目标的跟踪问题仍然具有挑战性。本文提出了基于窄带背景的快速两周期水平集方法(Fast Two-Cycle level set method with Narrow band Background,简称FTCNB)来自动提取此类视频序列中的前景目标。水平集曲线演化过程由两个连续的周期组成:一个周期用于数据相关项,另一个周期用于平滑正则化。曲线演化是通过计算两个轮廓像素链表上的区域竞争项的符号来实现的,而不是求解任何偏微分方程。在FTCNB方法中,利用最大A后验(MAP)优化方法进行光流辅助下的曲线优化。通过与其他水平集方法的比较,验证了该方法的跟踪精度。该方法的跟踪速度也优于传统的水平集方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Two-Cycle level set tracking with narrow perception of background
The problem of tracking foreground objects in a video sequence with moving background remains challenging. In this paper, we propose the Fast Two-Cycle level set method with Narrow band Background (FTCNB) to automatically extract the foreground objects in such video sequences. The level set curve evolution process consists of two successive cycles: one cycle for data dependent term and a second cycle for smoothness regularization. The curve evolution is implemented by computing the signs of region competition terms on two linked lists of contour pixels rather than solving any Partial Differential Equations (PDEs). Maximum A Posterior (MAP) optimization is applied in the FTCNB method for curve refinement with the assistance of optical flows. The comparison with other level set methods demonstrate the tracking accuracy of our method. The tracking speed of the proposed method also outperforms the traditional level set methods.
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