超低能量模拟图像处理使用自旋为基础的神经元

M. Sharad, C. Augustine, G. Panagopoulos, K. Roy
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引用次数: 22

摘要

在这项工作中,我们提出了一种超低能量的“传感器”图像处理架构,基于基于自旋神经元的细胞网络。“神经元”由一个带有多个输入磁铁的横向自旋阀(LSV)组成,通过金属通道连接到一个输出磁铁。低电阻,磁金属神经元在~20mV的小终端电压下工作,同时对光传感器输入进行模拟计算。通过器件终端的静态电流流动被限制在小周期内,对应于磁铁开关时间,并且由低占空比系统时钟决定。因此,在大多数图像传感应用中不可避免的模拟模式处理的能量成本降低了,并且可以与外围CMOS单元中的动态和泄漏功耗相媲美。通过基于物理的器件仿真框架,结合SPICE,获得了该架构在特征提取、半色调压缩和数字化等常见图像感知和处理应用中的性能。结果表明,与基于传统混合信号图像采集和处理方案的CMOS设计相比,所提出的设计方案可以将计算能量降低两个数量级以上。据作者所知,这是第一个将纳米磁铁(在LSV中)应用于模拟信号处理的工作。
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Ultra low energy analog image processing using spin based neurons
In this work we present an ultra low energy, `on-sensor' image processing architecture, based on cellular network of spin based neurons. The `neuron' constitutes of a lateral spin valve (LSV) with multiple input magnets, connected to an output magnet, using metal channels. The low resistance, magneto-metallic neurons operate at a small terminal voltage of ~20mV, while performing analog computation upon photo sensor inputs. The static current-flow across the device terminals is limited to small periods, corresponding to magnet switching time, and, is determined by a low duty-cycle system-clock. Thus, the energy-cost of analog-mode processing, inevitable in most image sensing applications, is reduced and made comparable to that of dynamic and leakage power consumption in peripheral CMOS units. Performance of the proposed architecture for some common image sensing and processing applications like, feature extraction, halftone compression and digitization, have been obtained through physics based device simulation framework, coupled with SPICE. Results indicate that the proposed design scheme can achieve more than two orders of magnitude reduction in computation energy, as compared to the state of art CMOS designs, that are based on conventional mixed-signal image acquisition and processing schemes. To the best of authors' knowledge, this is the first work where application of nano magnets (in LSV's) in analog signal processing has been proposed.
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