Spatial structure analysis for autonomous robotic vision systems

Kai Zhou, K. Varadarajan, M. Zillich, M. Vincze
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Abstract

Analysis of spatial structures in robotic environments, especially structures such as planar surfaces, has become a fundamental component in diverse robot vision systems since the introduction of low-cost RGB-D cameras that have been widely mounted on various indoor robots. These cameras are capable of providing high quality 3D reconstruction in real time. In order to estimate multiple planar structures without prior knowledge, this paper utilizes Jensen-Shannon Divergence (JSD), which is a similarity measurement method, to represent pairwise relationship between data. This conceptual representation encompasses the pairwise geometrical relations between data as well as the information about whether pairwise relationships exist in a model's inlier data set or not. Tests on datasets comprised of noisy inliers and a large percentage of outliers demonstrate that the proposed solution can efficiently estimate multiple models without prior information. Superior performance in terms of synthetic experiments and pragmatic tests with robot vision system also demonstrate the validity of the proposed approach.
自主机器人视觉系统的空间结构分析
自低成本的RGB-D相机被广泛应用于各种室内机器人以来,机器人环境中空间结构的分析,特别是平面结构的分析,已经成为各种机器人视觉系统的基本组成部分。这些相机能够实时提供高质量的3D重建。为了在没有先验知识的情况下估计多个平面结构,本文利用相似性度量方法Jensen-Shannon Divergence (JSD)来表示数据之间的两两关系。这种概念表示包含数据之间的成对几何关系,以及关于模型的初始数据集中是否存在成对关系的信息。在包含噪声内线和大量异常值的数据集上的测试表明,该方法可以在没有先验信息的情况下有效地估计多个模型。综合实验和机器人视觉系统的实际测试也证明了该方法的有效性。
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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