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Hierarchical Classification-Based Region Growing (HCBRG): A Collaborative Approach for Object Segmentation and Classification

机译:基于分层分类的区域增长(HCBRG):一种用于对象分割和分类的协作方法

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Object-based image classification approaches heavily rely on the segmentation process. However, the lack of interaction between both segmentation and classification steps is one of the major limits of these approaches. In this paper, we introduce a hierarchical classification based on a region growing approach driven by expert knowledge represented in a concept hierarchy. In order to overcome the region growing's limits, a first classification will associate a confidence score to each region in the image. This score will be used through an iterative step, which allows interaction between segmentation and classification at each iteration. Carried out experiments on a Quickbird image show the benefits of the introduced approach.
机译:基于对象的图像分类方法在很大程度上依赖于分割过程。但是,分割和分类步骤之间缺乏交互是这些方法的主要限制之一。在本文中,我们介绍了一种基于区域增长方法的层次分类,该方法由概念层次结构中表示的专家知识驱动。为了克服区域增长的限制,第一分类将置信度得分与图像中的每个区域相关联。该分数将通过迭代步骤使用,该迭代步骤允许在每次迭代时进行细分和分类之间的交互。在Quickbird图像上进行的实验表明了这种方法的好处。

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