Using Feature Selection For Object Segmentation and Tracking

M. S. Allili, D. Ziou
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引用次数: 3

Abstract

Most image segmentation algorithms in the past are based on optimizing an objective function that aims to achieve the similarity between several low-level features to build a partition of the image into homogeneous regions. In the present paper, we propose to incorporate the relevance (selection) of the grouping features to enforce the segmentation toward the capturing of objects of interest. The relevance of the features is determined through a set of positive and negative examples of a specific object defined a priori by the user. The calculation of the relevance of the features is performed by maximizing an objective function defined on the mixture likelihoods of the positive and negative object examples sets. The incorporation of the features relevance in the object segmentation is formulated through an energy functional which is minimized by using level set active contours. We show the efficiency of the approach on several examples of object of interest segmentation and tracking where the features relevance was used.
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利用特征选择进行目标分割和跟踪
过去的大多数图像分割算法都是基于优化目标函数,目的是实现几个低级特征之间的相似性,从而将图像划分为均匀区域。在本文中,我们提出结合分组特征的相关性(选择)来强制分割,以捕获感兴趣的对象。特征的相关性是通过用户先验定义的特定对象的一组正面和负面示例来确定的。特征相关性的计算是通过最大化一个目标函数来完成的,该目标函数定义在正、负对象示例集的混合似然上。结合目标分割中的特征相关性,通过使用水平集活动轮廓最小化的能量函数来制定。我们在几个使用特征相关性的兴趣对象分割和跟踪示例上展示了该方法的效率。
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