使用CNN芯片原型系统的视觉反馈

P. Arena, A. Basile, L. Fortuna, A. Virzì
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引用次数: 3

摘要

机器人运动控制通过一系列传感器,根据来自环境的信息,允许机器人实时调整其运动方案或轨迹。当机器人的目标是在非结构化环境中到达目标时,最好的方法是通过快速图像处理系统实现视觉控制。CNN-UM cP4000芯片原型的快速并行图像处理使其即使在实时控制问题中也能获得良好的性能。所实现的CNN视觉反馈控制的机器人具有六足构型,其运动系统也是由多层CNN结构实现的。本文提出了一种仿生机器人运动生成和视觉控制的CNN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。
Visual feedback by using a CNN chip prototype system
Robot locomotion control passes through a series of sensors that, according to information from the environment, allow the robot to adapt, in real time, its locomotion scheme or trajectory. When the goal of the robot is to reach a target in a non-structured environment the best approach is visual control realized by a fast image processing system. Fast parallel image processing of the CNN-UM cP4000 chip prototype permits one to obtain good performance, even in a real time control problem. The robot controlled by the implemented CNN visual feedback has a hexapod configuration and its locomotion system is also implemented by a multi-layer CNN structure. In this paper a CNN approach for both locomotion generation and visual control of the bio-inspired robot is presented.
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