Journal article
Nature Communications, vol. 16(1), 2025, p. 8231
APA
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Pedersen, J. E., Conradt, J., & Lindeberg, T. (2025). Covariant spatio-temporal receptive fields for spiking neural networks. Nature Communications, 16(1), 8231. https://doi.org/10.1038/s41467-025-63493-0
Chicago/Turabian
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Pedersen, J. E., J. Conradt, and T. Lindeberg. “Covariant Spatio-Temporal Receptive Fields for Spiking Neural Networks.” Nature Communications 16, no. 1 (2025): 8231.
MLA
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Pedersen, J. E., et al. “Covariant Spatio-Temporal Receptive Fields for Spiking Neural Networks.” Nature Communications, vol. 16, no. 1, 2025, p. 8231, doi:10.1038/s41467-025-63493-0.
BibTeX Click to copy
@article{pedersen2025a,
title = {Covariant spatio-temporal receptive fields for spiking neural networks},
year = {2025},
issue = {1},
journal = {Nature Communications},
pages = {8231},
volume = {16},
doi = {10.1038/s41467-025-63493-0},
author = {Pedersen, J. E. and Conradt, J. and Lindeberg, T.}
}
Biological nervous systems constitute important sources of inspiration towards computers that are faster, cheaper, and more energy efficient. Neuromorphic disciplines view the brain as a coevolved system, simultaneously optimizing the hardware and the algorithms running on it. There are clear efficiency gains when bringing the computations into a physical substrate, but we presently lack theories to guide efficient implementations. Here, we present a principled computational model for neuromorphic systems in terms of spatio-temporal receptive fields, based on affine Gaussian kernels over space and leaky-integrator and leaky integrate-and-fire models over time. Our theory is provably covariant to spatial affine and temporal scaling transformations, with close similarities to visual processing in mammalian brains. We use these spatio-temporal receptive fields as a prior in an event-based vision task, and show that this improves the training of spiking networks, which is otherwise known to be problematic for event-based vision. This work combines efforts within scale-space theory and computational neuroscience to identify theoretically well-founded ways to process spatio-temporal signals in neuromorphic systems. Our contributions are immediately relevant for signal processing and event-based vision, and can be extended to other processing tasks over space and time, such as memory and control.