AI Article Synopsis

  • Decoding sensory stimuli from neural activity helps us understand how the nervous system interprets the environment and supports brain-machine interface development.
  • The study presents a nonlinear decoding approach using neural networks to improve the accuracy and scalability of inferring visual stimuli from retinal ganglion cell activity.
  • Results show that nonlinear computations are essential for accurately decoding intricate details of natural images, while simpler low-pass features can be decoded using both linear and nonlinear methods.

Article Abstract

Decoding sensory stimuli from neural activity can provide insight into how the nervous system might interpret the physical environment, and facilitates the development of brain-machine interfaces. Nevertheless, the neural decoding problem remains a significant open challenge. Here, we present an efficient nonlinear decoding approach for inferring natural scene stimuli from the spiking activities of retinal ganglion cells (RGCs). Our approach uses neural networks to improve on existing decoders in both accuracy and scalability. Trained and validated on real retinal spike data from more than 1000 simultaneously recorded macaque RGC units, the decoder demonstrates the necessity of nonlinear computations for accurate decoding of the fine structures of visual stimuli. Specifically, high-pass spatial features of natural images can only be decoded using nonlinear techniques, while low-pass features can be extracted equally well by linear and nonlinear methods. Together, these results advance the state of the art in decoding natural stimuli from large populations of neurons.

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Source
http://dx.doi.org/10.1162/neco_a_01395DOI Listing

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