A Collision Detection System for a Mobile Robot Inspired by the Locust Visual System

Shigang Yue, F. Rind
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引用次数: 47

Abstract

The lobula giant movement detector (LGMD) is an identified neuron in the locust brain that responds most strongly to the image of an approaching object such as a predator. A computational neural network model based on the structure of the LGMD and its afferent inputs is also able to detect approaching objects. In order for the LGMD network to be used as a robust collision detector for robotic applications, we proposed a new mechanism to enhance the feature of colliding objects before the excitations are gathered by LGMD cell. The new model favours grouped excitation but tends to ignore isolated excitation with selective passing coefficients. Experiments with a Khepera robot showed the proposed collision detector worked in real time in an arena surrounded with blocks.
受蝗虫视觉系统启发的移动机器人碰撞检测系统
巨额运动检测器(LGMD)是蝗虫大脑中一个可识别的神经元,它对接近的物体(如捕食者)的图像反应最强烈。基于LGMD结构及其传入输入的计算神经网络模型也能够检测接近的物体。为了使LGMD网络作为机器人应用的鲁棒碰撞检测器,我们提出了一种新的机制,在LGMD单元收集激励之前增强碰撞目标的特征。新模型倾向于分组激励,而忽略了具有选择性通过系数的孤立激励。用Khepera机器人进行的实验表明,该碰撞探测器可以在被砖块包围的场地上实时工作。
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