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Bio-inspired Collision Detector with Enhanced Selectivity for Ground Robotic Vision System

Qinbing Fu, Shigang Yue, Cheng Hu

Year
2016
Citations
34

Abstract

<p>There are many ways of building collision-detecting systems. In this paper, we propose a novel collision selective visual neural network inspired by LGMD2 neurons in the juvenile locusts. Such collision-sensitive neuron matures early in the ?rst-aged or even hatching locusts, and is only selective to detect looming dark objects against bright background in depth, represents swooping predators, a situation which is similar to ground robots or vehicles. However, little has been done on modeling LGMD2, let alone its potential applications in robotics and other vision-based areas. Compared to other collision detectors, our major contributions are ?rst, enhancing the collision selectivity in a bio-inspired way, via constructing a computing ef?cient visual sensor, and realizing the revealed speci?c characteristic sofLGMD2. Second, we applied the neural network to help rearrange path navigation of an autonomous ground miniature robot in an arena. We also examined its neural properties through systematic experiments challenged against image streams from a visual sensor of the micro-robot.</p>

Keywords

LoomingRobotArtificial intelligenceComputer scienceCollisionComputer visionCollision avoidanceCollision detectionDetectorArtificial neural network

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