Stochastic Spintronic Neuron with Application to Image Binarization

Abdolah Amirany, M. Meghdadi, M. H. Moaiyeri, Kian Jafari
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引用次数: 4

Abstract

The hardware implementation of neural network has always been of interest to the researchers as it can significantly increase the efficiency and application of neural networks due to the distributed nature of Artificial Neural Networks (ANNs) in both memory and computation. Direct implementation of ANNs also offer large gains when scaling the network sizes. Stochastic neurons are among the most significant aspects of machine learning algorithms and are very important in different neural networks. In this paper, a hardware model for the stochastic neuron based on the magnetic tunnel junction (MTJ) in subcritical current switching regime is proposed. Functional evaluation of the proposed model demonstrates that the behavior of the proposed model is comparable to the mathematical description of the stochastic neuron, and it has a negligible error in comparison with the theoretical model. The simulation results of image binarization over 10,000 images indicate that the proposed hardware model has only 0.25% pack signal to noise ratio (PSNR) and 0.02% structural similarity (SSIM) variation compared to its software-based counterpart.
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随机自旋电子神经元在图像二值化中的应用
神经网络的硬件实现由于人工神经网络在内存和计算上的分布式特性,可以显著提高神经网络的效率和应用,一直是研究人员感兴趣的问题。在扩展网络规模时,人工神经网络的直接实现也提供了巨大的收益。随机神经元是机器学习算法中最重要的方面之一,在不同的神经网络中都非常重要。本文提出了一种基于磁隧道结(MTJ)的亚临界电流开关随机神经元的硬件模型。对所提模型的功能评价表明,所提模型的行为与随机神经元的数学描述相当,与理论模型相比误差可以忽略不计。对1万幅图像进行二值化的仿真结果表明,与基于软件的模型相比,所提出的硬件模型的包信噪比(PSNR)仅为0.25%,结构相似度(SSIM)仅为0.02%。
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