Beyond one-to-one feature correspondence: The need for many-to-many matching and image abstraction

Sven J. Dickinson
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引用次数: 1

Abstract

Summary form only given: In this paper briefly review three formulations of the many-to-many matching problem as applied to model acquisition, model indexing, and object recognition. In the first scenario, I will describe the problem of learning a prototypical shape model from a set of exemplars in which the exemplars may not share a single local feature in common. We formulate the problem as a search through the intractable space of feature combinations, or abstractions, to find the "lowest common abstraction" that is derivable from each input exemplar. This abstraction, in turn, defines a many-to-many feature correspondence among the extracted input features.
除了一对一的特征对应:需要多对多匹配和图像抽象
本文简要回顾了应用于模型获取、模型索引和目标识别的多对多匹配问题的三种表述。在第一个场景中,我将描述从一组示例中学习原型形状模型的问题,其中示例可能不共享单个共同的局部特征。我们将问题表述为在特征组合或抽象的难处理空间中进行搜索,以找到从每个输入范例中派生出来的“最低公共抽象”。这种抽象又在提取的输入特征之间定义了多对多的特征对应关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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