posted on 1985-06-01, 00:00authored byRyan Kelly, Tai Sing Lee
Decoding is a strategy that allows us to assess the amount of information
neurons can provide about certain aspects of the visual scene. In this
study, we develop a method based on Bayesian sequential updating and
the particle filtering algorithm to decode the activity of V1 neurons in
awake monkeys. A distinction in our method is the use of Volterra kernels
to filter the particles, which live in a high dimensional space. This
parametric Bayesian decoding scheme is compared to the optimal linear
decoder and is shown to work consistently better than the linear optimal
decoder. Interestingly, our results suggest that for decoding in real time,
spike trains of as few as 10 independent but similar neurons would be
sufficient for decoding a critical scene variable in a particular class of
visual stimuli. The reconstructed variable can predict the neural activity
about as well as the actual signal with respect to the Volterra kernels.