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Main Authors: Fang, Yuetong, Zhou, Deming, Wang, Ziqing, Ren, Hongwei, Zeng, ZeCui, Li, Lusong, Zhou, Shibo, Xu, Renjing
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.18608
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author Fang, Yuetong
Zhou, Deming
Wang, Ziqing
Ren, Hongwei
Zeng, ZeCui
Li, Lusong
Zhou, Shibo
Xu, Renjing
author_facet Fang, Yuetong
Zhou, Deming
Wang, Ziqing
Ren, Hongwei
Zeng, ZeCui
Li, Lusong
Zhou, Shibo
Xu, Renjing
contents Spiking Neural Networks promise brain-inspired and energy-efficient computation by transmitting information through binary (0/1) spikes. Yet, their performance still lags behind that of artificial neural networks, often assumed to result from information loss caused by sparse and binary activations. In this work, we challenge this long-standing assumption and reveal a previously overlooked frequency bias: spiking neurons inherently suppress high-frequency components and preferentially propagate low-frequency information. This frequency-domain imbalance, we argue, is the root cause of degraded feature representation in SNNs. Empirically, on Spiking Transformers, adopting Avg-Pooling (low-pass) for token mixing lowers performance to 76.73% on Cifar-100, whereas replacing it with Max-Pool (high-pass) pushes the top-1 accuracy to 79.12%. Accordingly, we introduce Max-Former that restores high-frequency signals through two frequency-enhancing operators: (1) extra Max-Pool in patch embedding, and (2) Depth-Wise Convolution in place of self-attention. Notably, Max-Former attains 82.39% top-1 accuracy on ImageNet using only 63.99M parameters, surpassing Spikformer (74.81%, 66.34M) by +7.58%. Extending our insight beyond transformers, our Max-ResNet-18 achieves state-of-the-art performance on convolution-based benchmarks: 97.17% on CIFAR-10 and 83.06% on CIFAR-100. We hope this simple yet effective solution inspires future research to explore the distinctive nature of spiking neural networks. Code is available: https://github.com/bic-L/MaxFormer.
format Preprint
id arxiv_https___arxiv_org_abs_2505_18608
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Spiking Neural Networks Need High Frequency Information
Fang, Yuetong
Zhou, Deming
Wang, Ziqing
Ren, Hongwei
Zeng, ZeCui
Li, Lusong
Zhou, Shibo
Xu, Renjing
Computer Vision and Pattern Recognition
Spiking Neural Networks promise brain-inspired and energy-efficient computation by transmitting information through binary (0/1) spikes. Yet, their performance still lags behind that of artificial neural networks, often assumed to result from information loss caused by sparse and binary activations. In this work, we challenge this long-standing assumption and reveal a previously overlooked frequency bias: spiking neurons inherently suppress high-frequency components and preferentially propagate low-frequency information. This frequency-domain imbalance, we argue, is the root cause of degraded feature representation in SNNs. Empirically, on Spiking Transformers, adopting Avg-Pooling (low-pass) for token mixing lowers performance to 76.73% on Cifar-100, whereas replacing it with Max-Pool (high-pass) pushes the top-1 accuracy to 79.12%. Accordingly, we introduce Max-Former that restores high-frequency signals through two frequency-enhancing operators: (1) extra Max-Pool in patch embedding, and (2) Depth-Wise Convolution in place of self-attention. Notably, Max-Former attains 82.39% top-1 accuracy on ImageNet using only 63.99M parameters, surpassing Spikformer (74.81%, 66.34M) by +7.58%. Extending our insight beyond transformers, our Max-ResNet-18 achieves state-of-the-art performance on convolution-based benchmarks: 97.17% on CIFAR-10 and 83.06% on CIFAR-100. We hope this simple yet effective solution inspires future research to explore the distinctive nature of spiking neural networks. Code is available: https://github.com/bic-L/MaxFormer.
title Spiking Neural Networks Need High Frequency Information
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2505.18608