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Spiking Neural Network Based Region Proposal Networks for Neuromorphic Vision Sensors

机译:基于尖峰神经网络的神经形态视觉传感器区域提议网络

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This paper presents a three layer spiking neural network based region proposal network operating on data generated by neuromorphic vision sensors. The proposed architecture consists of refractory, convolution and clustering layers designed with bio-realistic leaky integrate and fire (LIF) neurons and synapses. The proposed algorithm is tested on traffic scene recordings from a DAVIS sensor setup. The performance of the region proposal network has been compared with event based mean shift algorithm and is found to be far superior (≈ 50% better) in recall for similar precision (≈ 85%). Computational and memory complexity of the proposed method are also shown to be similar to that of event based mean shift.
机译:本文提出了一种基于三层加标神经网络的区域提议网络,该区域提议网络对由神经形态视觉传感器生成的数据进行操作。拟议的体系结构由耐火材料,卷积和聚类层组成,这些层设计有生物现实的泄漏整合和发射(LIF)神经元和突触。该算法在DAVIS传感器设置的交通场景记录上进行了测试。区域提案网络的性能已与基于事件的均值平移算法进行了比较,结果发现在召回率方面具有相似的精度(≈85%)优越(约50%更好)。所提出的方法的计算和存储复杂度也与基于事件的均值漂移相似。

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