NEAICVMar 25, 2024

QKFormer: Hierarchical Spiking Transformer using Q-K Attention

arXiv:2403.16552v282 citationsh-index: 13Has CodeNIPS
AI Analysis

This work addresses the performance gap in energy-efficient spiking neural networks for computer vision, representing a significant advance rather than an incremental improvement.

The paper tackles the suboptimal performance of Spiking Transformers by introducing QKFormer, a hierarchical spiking transformer with a novel Q-K attention mechanism, achieving a top-1 accuracy of 85.65% on ImageNet-1k, which is 10.84% higher than the previous state-of-the-art.

Spiking Transformers, which integrate Spiking Neural Networks (SNNs) with Transformer architectures, have attracted significant attention due to their potential for energy efficiency and high performance. However, existing models in this domain still suffer from suboptimal performance. We introduce several innovations to improve the performance: i) We propose a novel spike-form Q-K attention mechanism, tailored for SNNs, which efficiently models the importance of token or channel dimensions through binary vectors with linear complexity. ii) We incorporate the hierarchical structure, which significantly benefits the performance of both the brain and artificial neural networks, into spiking transformers to obtain multi-scale spiking representation. iii) We design a versatile and powerful patch embedding module with a deformed shortcut specifically for spiking transformers. Together, we develop QKFormer, a hierarchical spiking transformer based on Q-K attention with direct training. QKFormer shows significantly superior performance over existing state-of-the-art SNN models on various mainstream datasets. Notably, with comparable size to Spikformer (66.34 M, 74.81%), QKFormer (64.96 M) achieves a groundbreaking top-1 accuracy of 85.65% on ImageNet-1k, substantially outperforming Spikformer by 10.84%. To our best knowledge, this is the first time that directly training SNNs have exceeded 85% accuracy on ImageNet-1K. The code and models are publicly available at https://github.com/zhouchenlin2096/QKFormer

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