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Demonstration of Convolution Kernel Operation on Resistive Cross-Point Array

机译:电阻交叉点阵列上卷积核运算的演示

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摘要

Convolution is the key operation in the convolutional neural network, one of the most popular deep learning algorithms. The implementation of the convolution kernel on the resistive cross-point array is different than the implementation of the matrix-vector multiplication in prior works. In this letter, we propose a dimensional reduction of 2-D kernel matrix into 1-D column vector, i.e., a column of the array, and enable the parallel readout of multiple 2-D kernels simultaneously. As a proof-of-concept demonstration, we use the Prewitt kernels to detect both horizontal and vertical edges of the pixels of black-and-white MNIST handwritten digits. The experiments were performed on the fabricated resistive cross-point array based on the Pt/HfOx/TiN structure. The experimental results of the Prewitt kernel operation perfectly matches the simulation results, indicating the feasibility of the proposed implementation methodology of the convolution kernel on resistive cross-point array.
机译:卷积是卷积神经网络(最流行的深度学习算法之一)中的关键操作。卷积核在电阻性交叉点阵列上的实现与先前工作中矩阵矢量乘法的实现不同。在这封信中,我们提出将二维核矩阵降维为一维列向量(即数组的一列),并允许同时并行读取多个二维核。作为概念验证的演示,我们使用Prewitt内核检测黑白MNIST手写数字像素的水平和垂直边缘。实验是在基于Pt / HfOx / TiN结构的电阻交叉点阵列上进行的。 Prewitt核运算的实验结果与仿真结果完全匹配,表明所提出的在电阻性交叉点阵列上实现卷积核方法的可行性。

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