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MURPHY: A neurally-inspired connectionist approach to learning and performance in vision-based robot motion planning.

机译:MURPHY:一种基于神经的连接主义方法,用于在基于视觉的机器人运动计划中学习和表现。

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摘要

Many aspects of intelligent animal behavior require an understanding of the complex spatial relationships between the body and its parts and the coordinate systems of the external world. This thesis deals specifically with the problem of guiding a multi-link arm to a visual target in the presence of obstacles. A simple vision-based kinematic controller and motion planner based on a connectionist network architecture has been developed, called MURPHY. The physical setup consists of a video camera and a Rhino XR-3 robot arm with three joints that move in the image plane of the camera. We assume no a priori model of arm kinematics or of the imaging characteristics of the camera/visual system, and no sophisticated built-in algorithms for obstacle avoidance. Instead, MURPHY builds a model of his arm through a combination of physical and "mental" practice, and then uses simple heuristic search with mental images of his arm to solve visually-guided reaching problems in the presence of obstacles whose traditional algorithmic solutions are extremely complex. MURPHY differs from previous approaches to robot motion-planning primarily in his use of an explicit full-visual-field representation of the workspace. Several other aspects of MURPHY's design are unusual, including the sigma-pi synaptic learning rule, the teacherless training paradigm, and the integration of sequential control within an otherwise connectionist architecture. In concluding sections we outline a series of strong correspondences between the representations and algorithms used by MURPHY, and the psychology, physiology, and neural bases for the programming and control of directed, voluntary arm movements in humans and animals.
机译:聪明的动物行为的许多方面都需要了解人体及其部位与外部世界的坐标系统之间的复杂空间关系。本论文专门针对在存在障碍物的情况下将多连杆臂引导至视觉目标的问题。已经开发了一种简单的基于视觉的运动控制器和基于连接器网络体系结构的运动计划器,称为MURPHY。物理设置包括一台摄像机和一个Rhino XR-3机械臂,该机械臂具有在摄像机图像平面内移动的三个关节。我们假设没有手臂运动学的先验模型或相机/视觉系统的成像特性,也没有复杂的内置避障算法。取而代之的是,MURPHY通过物理和“心理”实践的组合来构建手臂模型,然后使用简单的启发式搜索与手臂的心理图像来解决在存在传统算法解决方案极为困难的障碍物的情况下视觉引导的到达问题复杂。 MURPHY与以前的机器人运动计划方法不同,主要在于他使用工作区的显式全视野表示。 MURPHY的设计的其他几个方面是不寻常的,包括sigma-pi突触学习规则,无师范训练范例以及在其他连接主义体系结构中的顺序控制集成。在最后的部分中,我们概述了MURPHY所使用的表示和算法与用于对人类和动物的定向,自愿手臂运动进行编程和控制的心理学,生理学和神经基础之间的一系列强烈对应关系。

著录项

  • 作者

    Mel, Bartlett W.;

  • 作者单位

    University of Illinois at Urbana-Champaign.;

  • 授予单位 University of Illinois at Urbana-Champaign.;
  • 学科 Biology Neuroscience.;Computer Science.;Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 1989
  • 页码 120 p.
  • 总页数 120
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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