碰撞选择性LGMDs神经元模型的研究得益于基于视觉的自主微型机器人

Qinbing Fu, Cheng Hu, Tian Liu, Shigang Yue
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引用次数: 29

摘要

机器人技术的发展为广泛学科的研究提供了信息。在本文中,我们将通过基于视觉的自主微型机器人研究和比较两种碰撞选择神经元模型。在蝗虫的视觉大脑中,两个巨叶运动探测器(LGMD1和LGMD2)已被确定为对快速膨胀的物体做出反应的隐约敏感神经元,但具有不同的碰撞选择性。这两种神经元已成功建模并应用于机器人视觉系统中,以高效可靠的方式感知潜在的碰撞。在这项研究中,我们首次在地面移动机器人的视觉模式下,将LGMD1和LGMD2神经元的功能结合起来,进行了双目神经元模型。系统的在线实验结果表明了本研究的三个贡献:(1)多机器人的竞技场测试验证了响应运动控制策略的有效性和鲁棒性,该策略通过整合LGMD1和LGMD2双边模型来进行动态场景的碰撞检测。(2)我们确定了LGMD1和LGMD2神经元模型之间不同的碰撞选择性,完成了相应的生物学研究。(3)所使用的微型机器人也可以为其他嵌入式视觉系统和群体机器人的研究提供借鉴。
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Collision selective LGMDs neuron models research benefits from a vision-based autonomous micro robot
The developments of robotics inform research across a broad range of disciplines. In this paper, we will study and compare two collision selective neuron models via a vision-based autonomous micro robot. In the locusts' visual brain, two Lobula Giant Movement Detectors (LGMDs), i.e. LGMD1 and LGMD2, have been identified as looming sensitive neurons responding to rapidly expanding objects, yet with different collision selectivity. Both neurons have been modeled and successfully applied in robotic vision system for perceiving potential collisions in an efficient and reliable manner. In this research, we conduct binocular neuronal models, for the first time combining the functionalities of LGMD1 and LGMD2 neurons, in the visual modality of a ground mobile robot. The results of systematic on-line experiments demonstrated three contributions of this research: (1) The arena tests involving multiple robots verified the effectiveness and robustness of a reactive motion control strategy via integrating a bilateral pair of LGMD1 and LGMD2 models for collision detection in dynamic scenarios. (2) We pinpointed the different collision selectivity between LGMD1 and LGMD2 neuron models, which fulfill corresponding biological research. (3) The utilized micro robot may also benefit researches on other embedded vision systems as well as swarm robotics.
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