Spiking Neural Networks (SNNs) executed on neuromorphic hardware promise energy-efficient, low-latency inference well-suited to edge deployment in size, weight, and power-constrained environments such as autonomous vehicles, wearable devices, and unmanned aerial platforms. However, a coherent research pathway to deployment of neuromorphic devices remains elusive. This paper presents a structured review and position on the state of SNN-based vision across four interconnected dimensions: network architectures, training methodologies, event-based datasets and simulation techniques, and neuromorphic computing hardware. We survey the evolution from shallow convolutional SNNs to spiking Transformers and hybrid designs which leverage the advantages of SNNs and conventional artificial neural networks. We also examine surrogate gradient training and ANN-to-SNN conversion approaches, catalogue real-world and simulated event-based datasets, and assess the landscape of neuromorphic platforms ranging from rigid mixed-signal architectures to fully-configurable digital systems. Our analysis reveals that while each area has matured considerably in isolation, critical integration challenges persist. In particular, event-based datasets remain scarce and lack standardisation, training methodologies introduce systematic gaps relative to deployment hardware, and access to neuromorphic platforms is restricted by proprietary toolchains and limited development kit availability. We conclude that bridging these integration gaps, rather than advancing individual components alone, represents the most important and least addressed work required to realise the potential of SNN-based vision at the edge.
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Michael Middleton
Teymoor Ali
Epifanios Baikas
Brain Sciences
University of Manchester
University of Southampton
Cardiff University
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Middleton et al. (Fri,) studied this question.
www.synapsesocial.com/papers/69e472fc010ef96374d8ee66 — DOI: https://doi.org/10.3390/brainsci16040422