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Papers/Shrinking Your TimeStep: Towards Low-Latency Neuromorphic ...

Shrinking Your TimeStep: Towards Low-Latency Neuromorphic Object Recognition with Spiking Neural Network

Yongqi Ding, Lin Zuo, Mengmeng Jing, Pei He, Yongjun Xiao

2024-01-02Data AugmentationObject RecognitionEvent data classification
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Abstract

Neuromorphic object recognition with spiking neural networks (SNNs) is the cornerstone of low-power neuromorphic computing. However, existing SNNs suffer from significant latency, utilizing 10 to 40 timesteps or more, to recognize neuromorphic objects. At low latencies, the performance of existing SNNs is drastically degraded. In this work, we propose the Shrinking SNN (SSNN) to achieve low-latency neuromorphic object recognition without reducing performance. Concretely, we alleviate the temporal redundancy in SNNs by dividing SNNs into multiple stages with progressively shrinking timesteps, which significantly reduces the inference latency. During timestep shrinkage, the temporal transformer smoothly transforms the temporal scale and preserves the information maximally. Moreover, we add multiple early classifiers to the SNN during training to mitigate the mismatch between the surrogate gradient and the true gradient, as well as the gradient vanishing/exploding, thus eliminating the performance degradation at low latency. Extensive experiments on neuromorphic datasets, CIFAR10-DVS, N-Caltech101, and DVS-Gesture have revealed that SSNN is able to improve the baseline accuracy by 6.55% ~ 21.41%. With only 5 average timesteps and without any data augmentation, SSNN is able to achieve an accuracy of 73.63% on CIFAR10-DVS. This work presents a heterogeneous temporal scale SNN and provides valuable insights into the development of high-performance, low-latency SNNs.

Results

TaskDatasetMetricValueModel
Object RecognitionDVS128 GestureAccuracy (% )94.91SSNN
Object RecognitionN-Caltech 101Accuracy (% )79.25SSNN
Object RecognitionCIFAR10-DVSAccuracy (% )78.57SSNN
Event data classificationDVS128 GestureAccuracy (% )94.91SSNN

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