T. Denton, M. Demirci, J. Abrahamson, A. Shokoufandeh, Sven J. Dickinson
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引用次数: 48
摘要
给定三维物体的二维视图集合集合和它们之间的相似性度量,我们提出了一种利用一个称为有界规范集(BCS)的小子集来总结集合的方法,该子集的成员最能代表原始集合的成员。这意味着BCS的成员之间尽可能地不同,同时又尽可能地与非BCS成员相似。本文将以几种方式扩展我们早期在计算规范集方面的工作[Denton, T, et al., 2004年6月]:通过省略对多目标优化的需要,通过允许施加基数约束,并通过引入总相似函数。我们评估了BCS在基于视图的对象识别环境中视图选择的适用性。
Selecting canonical views for view-based 3-D object recognition
Given a collection of sets of 2-D views of 3-D objects and a similarity measure between them, we present a method for summarizing the sets using a small subset called a bounded canonical set (BCS), whose members best represent the members of the original set. This means that members of the BCS are as dissimilar from each other as possible, while at the same time being as similar as possible to the nonBCS members. This paper would extend our earlier work on computing canonical sets [Denton, T, et al., June 2004] in several ways: by omitting the need for a multi-objective optimization, by allowing the imposition of cardinality constraints, and by introducing a total similarity function. We evaluate the applicability of BCS to view selection in a view-based object recognition environment.