自主无人机避障的生物动力视觉系统和人工神经网络

Máté Pethő, Ádám Nagy, T. Zsedrovits
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引用次数: 2

摘要

无人驾驶飞行器(uav)变得越来越普遍。它们在多种类型的自主工作中显示出巨大的潜力,尽管它们必须安全地完成这些任务。为了飞行安全,必须保证无人机在自主操作过程中不会与飞行路径上的任何物体发生碰撞。计算机视觉和人工神经网络已在许多应用中显示出有效的效果。然而,生物视觉系统和负责视觉处理的大脑区域可能拥有能够有效获取信息的解决方案。我们提出了一种新的系统,该系统基于哺乳动物视觉系统的视网膜和视觉皮层的结构和功能进行视觉线索提取,并使用无人机机载摄像头处理数据来检测预定义的障碍物。我们还研究了预处理对计算时间和识别效率的影响。
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A bio-motivated vision system and artificial neural network for autonomous UAV obstacle avoidance
Unmanned aerial vehicles (UAVs) becoming more and more common. They show excellent potential for multiple types of autonomous work, although they must achieve these tasks safely. For flight-safety, it must be assured that the UAV will avoid collision with any objects in its flight path during autonomous operations. Computer vision and artificial neural networks have shown to be effective in many applications. However, biological vision systems and the brain areas responsible for visual processing may hold solutions capable of acquiring information effectively. We are proposing a novel system, which performs visual cue extraction with algorithms based on the structure and functionality of the retina and the visual cortex of the mammalian visual system, and a convolutional neural network processing data to detect a predefined obstacle using the onboard camera of the UAV. We also examined the effect of preprocessing on calculation time and recognition effectiveness.
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