Jörg Conradt

Principal Investigator


EECS, CST

KTH Royal Institute of Technology, Sweden

Lindstedtsvägen 5
114 28 Stockholm, Sweden



Covariant spatio-temporal receptive fields for spiking neural networks


Journal article


J. E. Pedersen, J. Conradt, T. Lindeberg
Nature Communications, vol. 16(1), 2025, p. 8231


Cite

Cite

APA   Click to copy
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   Click to copy
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   Click to copy
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.}
}

Abstract

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.


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