统一基于边界和区域的测地线主动跟踪信息

N. Paragios, R. Deriche
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引用次数: 110

摘要

本文解决了在耦合测地线主动轮廓框架下,利用基于边界和区域的信息从静态观测器获取的一系列帧上跟踪多个非刚性物体的问题。给定当前帧,对所观察到的差帧进行统计分析,该差帧提供了根据条件概率区分静态区域和移动区域的测量。通过寻找吸引目标边界的曲线,并根据强度和运动属性最大化内部曲线区域的后验分割概率,定义了一个基于边界和基于区域的模块相结合的目标函数。该函数使用梯度下降法最小化。相关的Euler-Lagrange PDE使用Level-Set方法实现,其中非常快速的前传播算法将初始曲线演变为最终跟踪结果。利用真实的视频序列,得到了很有希望的实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unifying boundary and region-based information for geodesic active tracking
This paper addresses the problem of tracking several non-rigid objects over a sequence of frames acquired from a static observer using boundary and region-based information under a coupled geodesic active contour framework. Given the current frame, a statistical analysis is performed on the observed difference frame which provides a measurement that distinguishes between the static and mobile regions in terms of conditional probabilities. An objective function is defined that integrates boundary-based and region-based module by seeking curves that attract the object boundaries and maximize the a posteriori segmentation probability on the interior curve regions with respect to intensity and motion properties. This function is minimized using a gradient descent method. The associated Euler-Lagrange PDE is implemented using a Level-Set approach, where a very fast front propagation algorithm evolves the initial curve towards the final tracking result. Very promising experimental results are provided using real video sequences.
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