obstacle avoidance and target acquisition for robot navigation using a mixed signal analog/digital neuromorphic processing system
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2017
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Abstract
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.
| Reference Key |
milde2017frontiersobstacle
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| Authors | ;Moritz B. Milde;Hermann Blum;Alexander Dietmüller;Dora Sumislawska;Jörg Conradt;Giacomo Indiveri;Yulia Sandamirskaya |
| Journal | industrial \& engineering chemistry research |
| Year | 2017 |
| DOI |
10.3389/fnbot.2017.00028
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