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Spiking Optical Flow for Event-Based Sensors Using IBM's TrueNorth Neurosynaptic System

机译:使用IBM的TrueNorth神经突触系统增强基于事件的传感器的光流

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摘要

This paper describes a fully spike-based neural network for optical flow estimation from dynamic vision sensor data. A low power embedded implementation of the method, which combines the asynchronous time-based image sensor with IBM's TrueNorth Neurosynaptic System, is presented. The sensor generates spikes with submillisecond resolution in response to scene illumination changes. These spike are processed by a spiking neural network running on TrueNorth with a 1-ms resolution to accurately determine the order and time difference of spikes from neighbouring pixels, and therefore infer the velocity. The spiking neural network is a variant of the Barlow Levick method for optical flow estimation. The system is evaluated on two recordings for which ground truth motion is available, and achieves an average endpoint error of 11% at an estimated power budget of under 80 mW for the sensor and computation.
机译:本文介绍了一种基于完全尖峰的神经网络,用于根据动态视觉传感器数据估算光流。提出了该方法的低功耗嵌入式实现,该实现将基于时间的异步图像传感器与IBM的TrueNorth Neurosynaptic System相结合。传感器根据场景照度变化产生亚毫秒级的尖峰。这些峰值由运行在TrueNorth上的峰值神经网络(分辨率为1毫秒)处理,以准确确定与相邻像素的峰值的顺序和时间差,从而推断出速度。尖峰神经网络是Barlow Levick方法的一种,用于光流估计。该系统在可获得地面真实运动的两个记录上进行了评估,并在传感器和计算的估计功率预算低于80 mW的情况下,实现了11%的平均端点误差。

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