Enhancing SNN-based Spatio-Temporal Learning: A Benchmark Dataset and Cross-Modality Attention Model
Shibo Zhou, Bo Yang, Mengwen Yuan, Runhao Jiang, Rui Yan, Gang Pan,, Huajin Tang

TL;DR
This paper introduces a new neuromorphic dataset, DVS-SLR, with high temporal correlation and dual modalities, and proposes a Cross-Modality Attention model to improve SNN-based spatio-temporal learning and fusion.
Contribution
The work provides a novel dataset tailored for SNNs and develops a cross-modality attention method to enhance spatio-temporal feature fusion in SNNs.
Findings
The dataset offers higher temporal correlation and diverse scenarios.
The CMA model improves recognition accuracy.
The method enhances robustness across scenarios.
Abstract
Spiking Neural Networks (SNNs), renowned for their low power consumption, brain-inspired architecture, and spatio-temporal representation capabilities, have garnered considerable attention in recent years. Similar to Artificial Neural Networks (ANNs), high-quality benchmark datasets are of great importance to the advances of SNNs. However, our analysis indicates that many prevalent neuromorphic datasets lack strong temporal correlation, preventing SNNs from fully exploiting their spatio-temporal representation capabilities. Meanwhile, the integration of event and frame modalities offers more comprehensive visual spatio-temporal information. Yet, the SNN-based cross-modality fusion remains underexplored. In this work, we present a neuromorphic dataset called DVS-SLR that can better exploit the inherent spatio-temporal properties of SNNs. Compared to existing datasets, it offers…
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Taxonomy
TopicsGeographic Information Systems Studies · Text and Document Classification Technologies · Natural Language Processing Techniques
MethodsSoftmax · Attention Is All You Need
