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首页> 外文期刊>Journal of visual communication & image representation >Robust contour tracking based on a coupling between geodesic active contours and conditional random fields
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Robust contour tracking based on a coupling between geodesic active contours and conditional random fields

机译:基于测地活动轮廓与条件随机场之间耦合的稳健轮廓跟踪

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摘要

This paper presents a new general framework for contour tracking based on the synergy of two powerful segmentation tools, namely, spatial temporal conditional random fields (CRFs) and geodesic active contours (GACs). The contours of targets are modeled using a level set representation. The evolution of the level sets toward the target contours is formulated as one of the joint region-based (CRF) and boundary-based (GAC) segmentations under a unified Bayesian framework. A variational inference technique is used to solve this otherwise intractable inference problem, leading to approximate MAP solutions of both the new 3D spatial temporal CRF and the GAC model. The tracking result of the previous frame is used to initialize the curve in the current frame. Typical contour tracking problems are considered and experimental results are given to illustrate the robustness of the method against noise and its accurate performance in moving objects boundary localization.
机译:本文基于两个强大的分割工具(空间时态条件随机场(CRF)和测地线活动轮廓(GAC))的协同作用,提出了一种新的轮廓跟踪通用框架。使用轮廓集表示对目标轮廓进行建模。在统一的贝叶斯框架下,将水平集向目标轮廓线的演变公式化为基于联合区域(CRF)和基于边界(GAC)的分段之一。变分推理技术用于解决这个原本难以解决的推理问题,从而导致新的3D空间时域CRF和GAC模型的MAP近似解。前一帧的跟踪结果用于初始化当前帧中的曲线。考虑到典型的轮廓跟踪问题,并给出实验结果以说明该方法抗噪声的鲁棒性及其在运动物体边界定位中的精确性能。

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