Spike-Based MAX Networks for Nonlinear Pooling in Hierarchical Vision Processing

F. Folowosele, R. J. Vogelstein, R. Etienne-Cummings
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引用次数: 6

Abstract

Complex cells in the visual cortex utilize a maximum (MAX) operation to pool the outputs of simple cells to achieve feature specificity and invariance. We demonstrate a biologically-plausible MAX network for nonlinear pooling in hardware, using a reconfigurable multichip address event representation based VLSI system. With this implementation we have shown that we can implement simple and advanced stages of visual processing on the same chip and are one step closer to constructing an autonomous, continuous-time, biologically- plausible hierarchical model of visual information processing using large-scale arrays of identical silicon neurons.
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层次视觉处理中基于峰值的非线性池化MAX网络
视觉皮层中的复杂细胞利用最大(MAX)操作来汇集简单细胞的输出,以实现特征的特异性和不变性。我们使用基于VLSI系统的可重构多芯片地址事件表示,演示了用于硬件中非线性池化的生物学似是而非的MAX网络。通过这种实现,我们已经证明我们可以在同一芯片上实现简单和高级的视觉处理阶段,并且更接近于构建一个自主的,连续时间的,生物上合理的视觉信息处理层次模型,使用大规模的相同硅神经元阵列。
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