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Neuromorphic Hardware System for Visual Pattern Recognition With Memristor Array and CMOS Neuron

机译:用于忆阻器阵列和CMOS Neuron的视觉模式识别的神经形态硬件系统

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This paper presents a neuromorphic system for visual pattern recognition realized in hardware. A new learning rule based on modified spike-timing-dependent plasticity is also presented and implemented with passive synaptic devices. The system includes an artificial photoreceptor, a -based memristor array, and CMOS neurons. The artificial photoreceptor consisting of a CMOS image sensor and a field-programmable gate array converts an image into spike signals, and the memristor array is used to adjust the synaptic weights between the input and output neurons according to the learning rule. A leaky integrate-and-fire model is used for the output neuron that is built together with the image sensor on a single chip. The system has 30 input neurons that are interconnected to 10 output neurons through 300 memristors. Each input neuron corresponding to a pixel in a 5 6 pixel image generates voltage pulses according to the pixel value. The voltage pulses are then weighted and integrated by the memristors and the output neurons, respectively, to be compared with a certain threshold voltage above which an output neuron fires. The system has been successfully demonstrated by training and recognizing number images from 0 to 9.
机译:本文提出了一种在硬件上实现的用于视觉模式识别的神经形态系统。还提出了一种新的学习规则,该规则基于修改的依赖于尖峰时序的可塑性,并通过被动突触设备实现。该系统包括人工感光器,基于忆阻器的阵列和CMOS神经元。由CMOS图像传感器和现场可编程门阵列组成的人造感光体将图像转换为尖峰信号,忆阻器阵列用于根据学习规则调整输入和输出神经元之间的突触权重。泄漏积分和发射模型用于与图像传感器一起构建在单个芯片上的输出神经元。该系统具有30个输入神经元,它们通过300个忆阻器与10个输出神经元互连。对应于5 6像素图像中像素的每个输入神经元都会根据像素值生成电压脉冲。然后分别由忆阻器和输出神经元对电压脉冲进行加权和积分,以与某个阈值电压进行比较,在该阈值电压以上,输出神经元会触发。通过训练和识别从0到9的数字图像,该系统已成功演示。

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