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Shape-included label-consistent discriminative dictionary learning: An approach to detect and segment multi-class objects in images

机译:包含形状的标签一致性判别字典学习:一种检测和分割图像中多类对象的方法

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This paper introduces a segmentation approach, where a discriminative dictionary with objects' shape information is learned, followed by a sparse representation based segmentation process. In contrast with state-of-the-art sparse representation classification methods using discriminative dictionary learning, the proposed method learns a discriminative dictionary containing both intensity and shape information of object classes, in which shape information is collected and represented in the form of binarized masks. Object segmentation is achieved through an iterative process, including sparse representation, shape estimation, and shape refinement. The introduced method is evaluated and compared to state-of-the-art sparse representation based segmentation methods, and demonstrated better segmentation performance.
机译:本文介绍了一种分割方法,该方法学习具有对象形状信息的判别词典,然后进行基于稀疏表示的分割过程。与使用区分字典学习的最新稀疏表示分类方法相反,该方法学习包含对象类别的强度和形状信息的区分字典,其中收集形状信息并以二值化蒙版形式表示。对象分割是通过迭代过程实现的,包括稀疏表示,形状估计和形状细化。对引入的方法进行了评估,并将其与基于最新的稀疏表示的分割方法进行了比较,并证明了更好的分割性能。

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