基于图像的多电缆拓扑自主识别

R. Fujiki, H. Tanaka, Y. Kawahara, T. Yairi, K. Machida
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引用次数: 2

摘要

从工业情况到日常生活,当今社会中有很多电缆。然而,描述机器人设备自主操作的多电缆之间拓扑关系的研究并不多。本文讨论了一种利用图像建立多根电缆三维拓扑模型的自主计算方法。用概率密度函数来描述电缆模型,并通过EM算法对其参数进行优化,从而显示出电缆的结构和拓扑关系。然后,在EM模型导出的拓扑图结构的唯一点上添加传感器到点的深度,以便对目标电缆进行操作。为证明该算法的识别可能性,给出了基础实验的定量结果
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Autonomous Recognition of Multiple Cable Topology with Image
From industrial situation to ordinary life, there are a lot of cables in today's society. There, however, are not many studies that describe the topological relationship between multiple cables for autonomous operation of robotics device. In this paper, an autonomous computing way to create 3D topological model of multiple cables using image is discussed. Cable model is described by probability density function and optimized its parameters via EM algorithm, that indicates the configuration and topological relationships. In order to manipulate the object cables then, depth from sensor to points are added to the unique points in topological graph structure derived from EM model. The quantitative results of basic experiment that was aimed to prove the recognition possibility via the algorithm are reported
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