Model-based perceptual grouping and shape abstraction

Pablo Sala, Sven J. Dickinson
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引用次数: 12

Abstract

Contour features are re-emerging in the categorization community as it moves from appearance back to shape. However, the classical assumption of one-to-one correspondence between an extracted image contour and a model contour constrains category models to be highly brittle, offering little abstraction between image and model. Moreover, todaypsilas contour-based models are category-specific, offering no mechanism for contour grouping and abstraction in the absence of an object prior. We present a novel framework for recovering a set of abstract parts from a multi-scale contour image. Given a user-specified part vocabulary and an image to be analyzed, the system covers the image with abstract part models drawn from the vocabulary. More importantly, correspondence between image contours and part contours is many-to-one, yielding a powerful shape abstraction mechanism. We illustrate the strengths and weaknesses of this work in progress on a set of anecdotal scenes.
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基于模型的感知分组与形状抽象
轮廓特征在分类界重新出现,因为它从外观回到形状。然而,经典的提取图像轮廓与模型轮廓一一对应的假设限制了类别模型的高度脆性,在图像和模型之间提供了很少的抽象。此外,目前基于轮廓的模型是特定于类别的,在没有对象先验的情况下,没有提供轮廓分组和抽象的机制。我们提出了一种从多尺度轮廓图像中恢复一组抽象部分的新框架。给定用户指定的零件词汇表和要分析的图像,系统用从词汇表中绘制的抽象零件模型覆盖图像。更重要的是,图像轮廓和零件轮廓之间的对应关系是多对一的,产生了强大的形状抽象机制。我们在一组轶事场景中说明了这项工作的优点和缺点。
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