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An adaptive potential for robust shape estimation

机译:鲁棒形状估计的自适应潜力

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This paper describes an algorithm for shape estimation in cluttered scenes. A new image potential is defined based on strokes detected in the image. The motivation is simple. Feature detectors (e.g. edge points detectors) produce many outliers, which hamper the performance of boundary extraction algorithms. To overcome this difficulty we organize edges in strokes and assign a confidence degree (weight) to each stroke. The confidence degrees depend on the distance of the stroke points to the boundary estimates and they are updated during the estimation process. A deformable model is used to estimate the object boundary, based on the minimization of an adaptive potential function which depends on the confidence degree assigned to each stroke. Therefore, the image potential changes during the estimation process. Both steps (weight update, energy minimization) are derived as the solution of a maximum likelihood estimation problem using the EM algorithm. Experimental tests are provided to illustrate the performance of the proposed algorithm.
机译:本文介绍了一种在杂乱场景中进行形状估计的算法。基于图像中检测到的笔划定义新的图像电势。动机很简单。特征检测器(例如边缘点检测器)会产生许多异常值,这会影响边界提取算法的性能。为了克服这个困难,我们在笔划中组织边缘,并为每个笔划分配一个置信度(权重)。置信度取决于笔划点到边界估计的距离,并且在估计过程中会更新它们。基于自适应势函数的最小化,可变形模型用于估计对象边界,该函数取决于分配给每个笔划的置信度。因此,图像电势在估计过程中改变。这两个步骤(权重更新,能量最小化)都是使用EM算法得出的最大似然估计问题的解决方案。提供实验测试以说明所提出算法的性能。

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