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Shape-Based Object Localization for Descriptive Classification

机译:用于描述性分类的基于形状的对象本地化

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摘要

Discriminative tasks, including object categorization and detection, are central components of high-level computer vision. However, sometimes we are interested in a finer-grained characterization of the object's properties, such as its pose or articulation. In this paper we develop a probabilistic method (LOOPS) that can learn a shape and appearance model for a particular object class, and be used to consistently localize constituent elements (landmarks) of the object's outline in test images. This localization effectively projects the test image into an alternative representational space that makes it particularly easy to perform various descriptive tasks. We apply our method to a range of object classes in cluttered images and demonstrate its effectiveness in localizing objects and performing descriptive classification, descriptive ranking, and descriptive clustering.
机译:包括对象分类和检测在内的区分性任务是高级计算机视觉的核心组成部分。但是,有时我们对对象的属性(例如其姿势或关节)的细粒度表征感兴趣。在本文中,我们开发了一种概率方法(LOOPS),该方法可以学习特定对象类别的形状和外观模型,并用于在测试图像中一致地定位对象轮廓的组成元素(地标)。这种本地化有效地将测试图像投影到替代的表示空间中,这使得执行各种描述性任务特别容易。我们将我们的方法应用于杂乱图像中的一系列对象类别,并证明了其在定位对象以及执行描述性分类,描述性排名和描述性聚类中的有效性。

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