实时对象识别方法

M. Cabrera, I. L. Juárez, R. Cabrera, R. Osorio, H. Gomez
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引用次数: 0

摘要

提出了一种机器人装配任务中工件在线识别与分类的方法及其在智能制造单元中的应用。使用视觉感知和学习技术可以提高在非结构化环境中工作的工业机器人的性能。物体识别是使用具有FuzzyARTMAP架构的神经网络来完成的,用于学习和识别目的,该网络接收称为CFD&POSE的描述符向量作为输入。该向量代表了机器人任务中碎片分类和识别的创新方法,该方法的每个阶段都被一步一步地描述并解释了所提出的算法。矢量压缩来自装配部件的3D对象数据,并且不受缩放、旋转和方向的影响。该方法与ART网络的快速学习能力相结合,表明了工业机器人应用的适用性,正如实验结果所显示的那样,并且有可能将连接信息添加到描述符向量中,以实现更健壮的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real Time Object Recognition Methodology
This paper shows a methodology for on-line recognition and classification of pieces in robotic assembly tasks and its application into an intelligent manufacturing cell. The performance of industrial robots working in unstructured environments can be improved using visual perception and learning techniques The object recognition is accomplished using a neuronal network with FuzzyARTMAP architecture for learning and recognition purposes, which receives a descriptor vector called CFD&POSE as the input. This vector represents an innovative methodology for classification and identification of pieces in robotic tasks, every single stage of the methodology, is described step by step and the proposed algorithms explained. The vector compresses 3D object data from assembly parts and is invariant to scale, rotation and orientation. The approach in combination with the fast learning capability of ART networks indicates the suitability for industrial robot applications as it is shown in experimental results and the possibility to add concatenated information into the descriptor vector to achieve a much more robust methodology.
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