A viewpoint independent modeling approach to object recognition

M. Magee, M. Nathan
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引用次数: 7

Abstract

A robotic vision system is being developed which uses three-dimensional laser range data to sense its environment. The recognition subsystem incorporates topological as well as geometric information to identify viewed objects. Theorem-proving techniques are used to produce symbolic pattern matches. The major contributions of the recognition subsystem are 1) the use of viewpoint independent descriptors as the basis for representing known object models and 2) the use of theorem proving techniques to hypothesize object identities and recognize the viewed object as an instance of the appropriate viewpoint independent model descriptor. The representation scheme permits describing objects at a variety of topological and geometric levels. Furthermore, the use of viewpoint independent descriptors facilitates object recognition from a single arbitrary view despite missing information or the inclusion of viewpoint dependent artifacts. The theorem-proving approach establishes a symbolic correspondence between viewpoint independent features in the (recognized) model and features in the observed data. The recognition process uses a three-phase approach. First, hypotheses are generated which correspond to model descriptors that are likely to match the data. Evidence is applied to viable hypotheses to produce a partial match. The partial match is then used to constrain the full recognition process which leads to object identification. This strategy has been found to constrain strongly the search space of possible matches and leads to large reductions in recognition times. Results of the recognition process on synthetic and actual laser range data are presented for several objects. The system is shown to operate with robustness and alacrity.
一种视点独立的目标识别建模方法
一种机器人视觉系统正在开发中,它使用三维激光距离数据来感知其环境。识别子系统结合拓扑和几何信息来识别被观察的物体。定理证明技术用于生成符号模式匹配。识别子系统的主要贡献是:1)使用视点独立描述符作为表示已知对象模型的基础;2)使用定理证明技术来假设对象身份,并将被查看的对象识别为适当的视点独立模型描述符的实例。该表示方案允许在各种拓扑和几何级别上描述对象。此外,视点独立描述符的使用有助于从单个任意视图识别对象,尽管缺少信息或包含视点相关工件。定理证明方法在(识别)模型中的视点无关特征与观测数据中的特征之间建立了符号对应关系。识别过程采用三个阶段的方法。首先,生成与可能与数据匹配的模型描述符相对应的假设。证据被应用于可行的假设,以产生部分匹配。然后使用部分匹配来约束完整的识别过程,从而导致对象识别。研究发现,这种策略强烈地限制了可能匹配的搜索空间,并大大减少了识别时间。给出了几种目标激光距离数据的识别结果。该系统具有鲁棒性和敏捷性。
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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