Neuromorphic networks on the SpiNNaker platform

G. Haessig, F. Galluppi, Xavier Lagorce, R. Benosman
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引用次数: 7

Abstract

This paper describes spike-based neural networks for optical flow and stereo estimation from Dynamic Vision Sensors data. These methods combine the Asynchronous Time-based Image Sensor with the SpiNNaker platform. The sensor generates spikes with sub-millisecond resolution in response to scene illumination changes. These spike are processed by a spiking neural network running on SpiNNaker with a 1 millisecond resolution to accurately determine the order and time difference of spikes from neighboring pixels, and therefore infer the velocity, direction or depth. The spiking neural networks are a variant of the Barlow-Levick method for optical flow estimation, and Marr& Poggio for the stereo matching.
SpiNNaker平台的神经形态网络
本文介绍了基于脉冲神经网络的光流和立体估计的动态视觉传感器数据。这些方法将异步基于时间的图像传感器与SpiNNaker平台相结合。传感器产生亚毫秒分辨率的尖峰响应场景照明的变化。这些峰值由SpiNNaker上运行的峰值神经网络处理,分辨率为1毫秒,以准确确定相邻像素的峰值顺序和时间差,从而推断速度,方向或深度。尖峰神经网络是光流估计的Barlow-Levick方法和立体匹配的Marr& Poggio方法的变体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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