Abstract:
This paper proposes a two-step spike encoding, which consists of the source encoding and process encoding for energy-efficient spiking-neural-network (SNN) acceleration. ...Show MoreMetadata
Abstract:
This paper proposes a two-step spike encoding, which consists of the source encoding and process encoding for energy-efficient spiking-neural-network (SNN) acceleration. The eigen-train generation and its superposition generate spike trains which show high accuracy with low spike ratio. Sparsity boosting (SB) and spike generation skipping (SGS) reduce the number of operations for SNN. Time shrinking multi-level encoding (TS-MLE) compresses the number of spikes in a train along time axis, and spike-level clock skipping (SLCS) decreases the processing time. Eigen-train generation achieves 90.3% accuracy, the same accuracy as CNN, under the condition of 4.18% spike ratio for CIFAR-10 classification. SB reduces spike ratio by 0.49× with only 0.1% accuracy loss, and the SGS reduces the spike ratio by 20.9% with 0.5% accuracy loss. TS- MLE and SLCS increase the throughput of SNN by 2.8× while decreasing the hardware resource for spike generator by 75% compared with previous generators.
Date of Conference: 19-22 May 2024
Date Added to IEEE Xplore: 02 July 2024
ISBN Information: