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首页> 外文期刊>Frontiers in Neurorobotics >Obstacle Avoidance and Target Acquisition for Robot Navigation Using a Mixed Signal Analog/Digital Neuromorphic Processing System
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Obstacle Avoidance and Target Acquisition for Robot Navigation Using a Mixed Signal Analog/Digital Neuromorphic Processing System

机译:使用混合信号模拟/数字神经形态处理系统的机器人导航避障和目标捕获

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Neuromorphic hardware emulates dynamics of biological neural networks in electronic circuits offering an alternative to the von Neumann computing architecture that is low-power, inherently parallel, and event-driven. This hardware allows to implement neural-network based robotic controllers in an energy-efficient way with low latency, but requires solving the problem of device variability, characteristic for analog electronic circuits. In this work, we interfaced a mixed-signal analog-digital neuromorphic processor ROLLS to a neuromorphic dynamic vision sensor (DVS) mounted on a robotic vehicle and developed an autonomous neuromorphic agent that is able to perform neurally inspired obstacle-avoidance and target acquisition. We developed a neural network architecture that can cope with device variability and verified its robustness in different environmental situations, e.g., moving obstacles, moving target, clutter, and poor light conditions. We demonstrate how this network, combined with the properties of the DVS, allows the robot to avoid obstacles using a simple biologically-inspired dynamics. We also show how a Dynamic Neural Field for target acquisition can be implemented in spiking neuromorphic hardware. This work demonstrates an implementation of working obstacle avoidance and target acquisition using mixed signal analog/digital neuromorphic hardware.
机译:Neuromorphic硬件模拟电子电路中生物神经网络的动态特性,为von Neumann计算架构提供了另一种选择,该架构具有低功耗,固有并行性和事件驱动功能。该硬件允许以低延迟的节能方式实现基于神经网络的机器人控制器,但需要解决设备可变性的问题,即模拟电子电路的特性。在这项工作中,我们将混合信号模拟数字神经形态处理器ROLLS连接到安装在机器人车辆上的神经形态动态视觉传感器(DVS),并开发了能够执行神经启发性避障和目标捕获的自主神经形态代理。我们开发了一种神经网络架构,可以应对设备的可变性并验证其在不同环境条件下的稳健性,例如移动障碍物,移动目标,杂波和光线不足的环境。我们演示了该网络如何结合DVS的特性,使机器人能够使用简单的生物学启发式动力学来避免障碍。我们还展示了如何在尖峰神经形态硬件中实现用于目标获取的动态神经场。这项工作演示了使用混合信号模拟/数字神经形态硬件实现工作障碍回避和目标获取的实现。

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