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Mapping Convolutional Neural Networks onto Neuromorphic Chip for Spike-Based Computation

机译:将卷积神经网络映射到神经形状芯片中的峰值计算

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Recent years, spike-based neuron computing on scalable and event-based neuromorphic hardware has demonstrated impressive energy efficiency. In this paper, we propose a novel spiking scheme for 1-bit and 8-bit convolutional neural networks and a systematic mapping algorithm for their deployments on a digital neuromorphic ASIC, with which we can automatically partition input and output feature maps for a 1152*1024 crossbar computing element for a excellent resource efficiency. Experimental results on MNIST dataset show that we can achieve about 98.5% and 99.4% test accuracy for these two kinds of bitwidth networks respectively, while the chip can achieve nearly 863 and 174 images/sec real-time inference speed at 0.9 V, 252 MHz.
机译:近年来,基于尖峰的神经元计算可扩展和事件的神经形态硬件已经表现出令人印象深刻的能效。 在本文中,我们提出了一种用于1位和8位卷积神经网络的新型尖峰方案,以及系统映射算法,用于它们在数字神经形态ASIC上部署,我们可以自动分区输入和输出特征映射1152 * 1024横杆计算元件,用于优异的资源效率。 MNIST DataSet的实验结果表明,我们分别可以达到这两种比特宽网络的约98.5%和99.4%的测试精度,而芯片可以实现近863和174次图像/ SEC实时推理速度0.9 V,252 MHz 。

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