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Using Models of Objects with Deformable Parts for Joint Categorization and Segmentation of Objects

机译:使用具有可变形零件的对象模型对对象进行联合分类和分段

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Several formulations based on Random Fields (RFs) have been proposed for joint categorization and segmentation (JCaS) of objects in images. The RF's sites correspond to pixels or superpixels of an image and one defines potential functions (typically over local neighborhoods) which define costs for the different possible assignments of labels to several different sites. Since the segmentation is unknown a priori, one cannot define potential functions over arbitrarily large neighborhoods as that may cross object boundaries. Categorization algorithms extract a set of interest points from the entire image and solve the categorization problem by optimizing cost functions that depend on the feature descriptors extracted from these interest points. There is some disconnect between segmentation algorithms which consider local neighborhoods and categorization algorithms which consider non-local neighborhoods. In this work, we propose to bridge this gap by introducing a novel formulation which uses models of objects with deformable parts, classically used for object categorization, to solve the JCaS problem. We use these models to introduce two new classes of potential functions for JCaS; (a) the first class of potential functions encodes the model score for detecting an object as a function of its visible parts only, and (b) the second class of potential functions encodes shape priors for each visible part and is used to bias the segmentation of the pixels in the support region of the part, towards the foreground object label. We show that most existing deformable parts formulations can be used to define these potential functions and that the resulting potential functions can be optimized exactly using min-cut. As a result, these new potential functions can be integrated with most existing RF-based formulations for JCaS.
机译:已经提出了几种基于随机场(RF)的公式,用于图像中对象的联合分类和分段(JCaS)。 RF的位置对应于图像的像素或超像素,并且一个位置定义了潜在的功能(通常在本地附近),这些功能定义了将标签分配给几个不同位置的可能成本。由于分割是先验未知的,因此无法定义任意大邻域上的潜在函数,因为这可能会跨越对象边界。分类算法从整个图像中提取一组兴趣点,并通过优化依赖于从这些兴趣点提取的特征描述符的成本函数来解决分类问题。在考虑局部邻域的分割算法与考虑非局部邻域的分类算法之间存在一些脱节。在这项工作中,我们建议通过引入一种新颖的公式来弥合这一差距,该公式使用具有可变形部分的对象模型来解决JCaS问题,该模型通常用于对象分类。我们使用这些模型为JCaS引入了两类新的潜在函数。 (a)第一类潜在函数对仅用于检测对象的模型分数进行编码以作为其可见部分的函数,并且(b)第二类潜在函数对每个可见部分的形状先验进行编码,并用于偏置分割零件的支撑区域中朝向前景对象标签的像素数。我们表明,大多数现有的可变形零件公式可用于定义这些潜在函数,并且可以使用最小割精确地优化所得的潜在函数。结果,这些新的潜在功能可以与大多数现有的基于JCaS的基于RF的公式集成。

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