Redundant Neural Vision Systems—Competing for Collision Recognition Roles

Shigang Yue, F. Rind
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引用次数: 48

Abstract

Ability to detect collisions is vital for future robots that interact with humans in complex visual environments. Lobula giant movement detectors (LGMD) and directional selective neurons (DSNs) are two types of identified neurons found in the visual pathways of insects such as locusts. Recent modeling studies showed that the LGMD or grouped DSNs could each be tuned for collision recognition. In both biological and artificial vision systems, however, which one should play the collision recognition role and the way the two types of specialized visual neurons could be functioning together are not clear. In this modeling study, we compared the competence of the LGMD and the DSNs, and also investigate the cooperation of the two neural vision systems for collision recognition via artificial evolution. We implemented three types of collision recognition neural subsystems - the LGMD, the DSNs and a hybrid system which combines the LGMD and the DSNs subsystems together, in each individual agent. A switch gene determines which of the three redundant neural subsystems plays the collision recognition role. We found that, in both robotics and driving environments, the LGMD was able to build up its ability for collision recognition quickly and robustly therefore reducing the chance of other types of neural networks to play the same role. The results suggest that the LGMD neural network could be the ideal model to be realized in hardware for collision recognition.
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冗余神经视觉系统:碰撞识别角色的竞争
检测碰撞的能力对于未来机器人在复杂的视觉环境中与人类互动至关重要。巨叶运动检测器(LGMD)和定向选择神经元(dsn)是蝗虫等昆虫视觉通路中发现的两种已识别的神经元。最近的建模研究表明,LGMD或分组dsn都可以用于碰撞识别。然而,在生物视觉系统和人工视觉系统中,哪一种视觉神经元应该扮演碰撞识别的角色,以及这两种特殊的视觉神经元如何协同工作,目前还不清楚。在建模研究中,我们比较了LGMD和dsn的能力,并通过人工进化研究了两种神经视觉系统在碰撞识别中的合作。我们在每个单独的代理中实现了三种类型的碰撞识别神经子系统- LGMD, dsn和将LGMD和dsn子系统结合在一起的混合系统。一个开关基因决定了三个冗余神经子系统中哪一个起碰撞识别作用。我们发现,在机器人和驾驶环境中,LGMD都能够快速而稳健地建立起碰撞识别能力,从而减少了其他类型的神经网络发挥同样作用的机会。结果表明,LGMD神经网络是一种理想的碰撞识别硬件实现模型。
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来源期刊
IEEE Transactions on Autonomous Mental Development
IEEE Transactions on Autonomous Mental Development COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-ROBOTICS
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审稿时长
3 months
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