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Effective sensor fusion with event-based sensors and deep network architectures

机译:与基于事件的传感器和深度网络架构进行有效的传感器融合

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The use of spiking neuromorphic sensors with state-of-art deep networks is currently an active area of research. Still relatively unexplored are the pre-processing steps needed to transform spikes from these sensors and the types of network architectures that can produce high-accuracy performance using these sensors. This paper discusses several methods for preprocessing the spiking data from these sensors for use with various deep network architectures. The outputs of these preprocessing methods are evaluated using different networks including a deep fusion network composed of Convolutional Neural Networks and Recurrent Neural Networks, to jointly solve a recognition task using the MNIST (visual) and TIDIGITS (audio) benchmark datasets. With only 1000 visual input spikes from a spiking hardware retina, the classification accuracy of 64.5% achieved by a particular trained fusion network increases to 98.31% when combined with inputs from a spiking hardware cochlea.
机译:尖峰神经形态传感器与先进的深度网络的结合使用目前是一个活跃的研究领域。仍然尚待探索的是转换来自这些传感器的尖峰所需的预处理步骤,以及可以使用这些传感器产生高精度性能的网络体系结构的类型。本文讨论了几种预处理这些传感器的峰值数据的方法,这些方法可用于各种深度网络体系结构。使用包括卷积神经网络和递归神经网络的深度融合网络在内的不同网络对这些预处理方法的输出进行评估,以使用MNIST(可视)和TIDIGITS(音频)基准数据集共同解决识别任务。借助来自尖峰硬件视网膜的1000个视觉输入尖峰,与来自尖峰硬件耳蜗的输入结合使用时,经过特殊训练的融合网络所实现的分类精度为64.5%,可提高到98.31%。

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