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A NEURAL MODEL OF THE LOCUST VISUAL SYSTEM FOR DETECTION OF OBJECT APPROACHES WITH REAL-WORLD SCENES

机译:基于实景场景的目标视觉系统的神经网络模型

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In the central nervous systems of animals like pigeons and locusts, neurons were identified which signal objects approaching the animal on a direct collision course. Unraveling the neural circuitry for collision avoidance, and identifying the underlying computational principles, is promising for building vision-based neuromorphic architectures, which in the near future could find applications in cars or planes. At the present there is no published model available for robust detection of approaching objects under real-world conditions. Here we present a computational architecture for signalling impending collisions, based on known anatomical data of the locust lobula giant movement detector (LGMD) neuron. Our model shows robust performance even in adverse situations, such as with approaching low-contrast objects, or with highly textured and moving backgrounds. We furthermore discuss which components need to be added to our model to convert it into a full-fledged real-world-environment collision detector.
机译:在诸如鸽子和蝗虫之类的动物的中枢神经系统中,识别出了神经元,这些神经元发出信号指示在直接碰撞过程中接近动物的物体。揭露用于避免碰撞的神经电路,并确定潜在的计算原理,对于构建基于视觉的神经形态架构很有希望,该形态在不久的将来可能会在汽车或飞机上找到应用。目前,尚无公开的模型可用于在现实条件下对靠近的物体进行稳健的检测。在这里,我们基于蝗虫小叶巨人移动检测器(LGMD)神经元的已知解剖数据,提出了一种即将发生碰撞的信号的计算体系结构。即使在不利的情况下,例如接近低对比度的物体,或具有高纹理和动态背景的情况下,我们的模型也显示出强大的性能。我们还将讨论需要将哪些组件添加到模型中,以将其转换为成熟的真实环境环境碰撞检测器。

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