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Collision detection in complex dynamic scenes using an LGMD-based visual neural network with feature enhancement

机译:使用具有功能增强功能的基于LGMD的视觉神经网络在复杂动态场景中进行碰撞检测

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摘要

The lobula giant movement detector (LGMD) is an identified neuron in the locust brain that responds most strongly to the images of an approaching object such as a predator. Its computational model can cope with unpredictable environments without using specific object recognition algorithms. In this paper, an LGMD-based neural network is proposed with a new feature enhancement mechanism to enhance the expanded edges of colliding objects via grouped excitation for collision detection with complex backgrounds. The isolated excitation caused by background detail will be filtered out by the new mechanism. Offline tests demonstrated the advantages of the presented LGMD-based neural network in complex backgrounds. Real time robotics experiments using the LGMD-based neural network as the only sensory system showed that the system worked reliably in a wide range of conditions; in particular, the robot was able to navigate in arenas with structured surrounds and complex backgrounds.
机译:小叶巨人运动检测器(LGMD)是蝗虫大脑中已识别的神经元,对接近物体(例如掠食者)的图像反应最强烈。它的计算模型可以应对不可预测的环境,而无需使用特定的对象识别算法。本文提出了一种基于LGMD的神经网络,该网络具有新的特征增强机制,可通过分组激励来增强碰撞对象的扩展边缘,以用于复杂背景下的碰撞检测。由背景细节引起的孤立激励将被新机制滤除。离线测试在复杂的背景下证明了所提出的基于LGMD的神经网络的优势。使用基于LGMD的神经网络作为唯一的传感系统的实时机器人实验表明,该系统可在各种条件下可靠地工作;尤其是,该机器人能够在结构化环境和复杂背景下的竞技场中导航。

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