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A 1.82mm 2 65nm neuromorphic object recognition processor is designed using a sparse feature extraction inference module (IM) and a task-driven dictionary classifier. To achieve a high throughput, the 256-neuron IM is organized in four parallel neural networks to process four image patches and generate sparse neuron spikes. The on-chip classifier is activated by sparse neuron spikes to infer the object class, reducing its power by 88% and simplifying its implementation by removing all multiplications. A light-weight co-processor performs efficient on-chip learning by taking advantage of sparse neuron activity to save 84% of its workload and power. The test chip processes 10.16G pixel/s, dissipating 268mW. Integrated IM and classifier provides extra error tolerance for voltage scaling, lowering power to 3.65mW at a throughput of 640M pixel/s.
Kim et al. (Mon,) studied this question.