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A Compact and Accelerated Spike-based Neuromorphic VLSI Chip for Pattern Recognition

机译:紧凑,加速的基于峰值的神经形态VLSI芯片,用于模式识别

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In this paper, we present a compact and accelerated spike-based neuromorphic chip that support on-line pattern recognition. The chip integrates 100 input layer neurons and 7000 synaptic plasticity circuits to handle the pattern classification problem of a 10×10 input pixel array. With the mechanism of spike-timing dependent plasticity (STDP) circuits and teacher signals, the chip can support both supervised learning and unsupervised learning. Fabricated in a 55nm technology, the core circuits occupies the area of 623×540 μm2. The simulation results show that the chip can handle the pattern recognition task such as MNIST data set classification, and the power consumption is about 5.5mW.
机译:在本文中,我们提出了一种紧凑且加速的基于尖峰的神经形态芯片,该芯片支持在线模式识别。该芯片集成了100个输入层神经元和7000个突触可塑性电路,以处理10×10输入像素阵列的模式分类问题。借助依赖于尖峰时序的可塑性(STDP)电路和教师信号的机制,该芯片既可以支持有监督的学习又可以支持无监督的学习。采用55nm技术制造,核心电路占据623×540μm的面积 2 。仿真结果表明,该芯片可以处理诸如MNIST数据集分类等模式识别任务,功耗约为5.5mW。

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