Function-Based Generic Recognition for Multiple Object Categories

Stark L., Bowyer K.
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引用次数: 84

Abstract

Abstract In function-based object recognition an object category is represented by knowledge about object function. Function-based approaches are important because they provide a principled means of constructing generic recognition systems. Our work concentrates specifically on the relation between shape and function of rigid 3D objects. Recognition of an observed object shape is performed by reasoning about the function that the shape might serve. Recent research has demonstrated the feasibility of function-based shape recognition. However, previous efforts have dealt with only a single basic level object category. A number of important issues arise in extending a function-based approach to handle multiple basic level categories. One issue is whether the knowledge about function can be organized into general primitive chunks that are reusable across different categories. Another issue is how to efficiently index the knowledge base so as to avoid exhaustive testing of an object shape against each known category. In order to explore these issues, we have implemented a second-generation function-based recognition system that handles a collection of basic level object categories within the superordinate category furniture. The recognition capabilities and indexing performance of this system have been evaluated on a database of over 250 shapes. We also show recognition results from some 3D shape descriptions acquired from laser range finder data. To our knowledge, this is the first (only) work in function-based recognition to address the recognition of multiple object categories.
基于函数的多目标分类通用识别
在基于函数的对象识别中,对象类别由对象函数的知识表示。基于函数的方法很重要,因为它们提供了构建通用识别系统的原则方法。我们的工作主要集中在刚性三维物体的形状和功能之间的关系。对观察到的物体形状的识别是通过对该形状可能服务的功能进行推理来完成的。最近的研究已经证明了基于功能的形状识别的可行性。然而,以前的工作只处理了一个基本级别的对象类别。在扩展基于函数的方法来处理多个基本级别类别时,会出现许多重要问题。一个问题是,关于函数的知识是否可以组织成通用的基元块,这些基元块可以跨不同的类别重用。另一个问题是如何有效地索引知识库,以避免针对每个已知类别对对象形状进行详尽的测试。为了探索这些问题,我们实现了第二代基于函数的识别系统,该系统处理上级类别家具中的基本级别对象类别集合。该系统的识别能力和索引性能在250多个形状的数据库上进行了评估。我们还展示了从激光测距仪数据中获得的一些三维形状描述的识别结果。据我们所知,这是第一个(唯一的)基于函数的识别工作,以解决多个对象类别的识别问题。
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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