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From Meaningful Contours to Discriminative Object Shape

机译:从有意义的轮廓到可区分的对象形状

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Shape is a natural, highly prominent characteristic of objects that human vision utilizes everyday. But despite its expressiveness, shape poses significant challenges for category-level object detection in cluttered scenes: Object form is an emergent property that cannot be perceived locally but becomes only available once the whole object has been detected and segregated from the background. Thus we address the detection of objects and the assembling of their shape simultaneously. A dictionary of meaningful contours is obtained by clustering based on contour co-activation in all training images. We seek a joint, consistent placement of all contours in an image, since placing them independently from another is not reliable due to the emergence of shape. Therefore, the characteristic object shape is learned by discovering spatially consistent configurations of all dictionary contours using maximum margin multiple instance learning. During recognition, objects are detected and their shape is explained simultaneously by optimizing a single cost function. We demonstrate the benefit of our approach on standard shape benchmarks.
机译:形状是人类视觉每天使用的物体的自然,高度突出的特征。但是,尽管形状具有表现力,但对于杂乱场景中的类别级对象检测而言,形状仍构成了重大挑战:对象形式是一种新兴属性,无法在本地感知,而只有在检测到整个对象并将其与背景隔离后才可用。因此,我们同时解决了物体的检测及其形状的组装问题。通过在所有训练图像中基于轮廓共激活进行聚类,可以获得有意义轮廓的字典。我们寻求图像中所有轮廓的联合,一致的放置,因为由于形状的出现,将它们彼此独立放置是不可靠的。因此,通过使用最大余量多实例学习来发现所有字典轮廓的空间上一致的配置,来学习特征对象的形状。在识别过程中,可以通过优化单个成本函数来检测物体并同时说明其形状。我们在标准形状基准测试中证明了我们方法的好处。

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