
Summary: We formulate a basic problem for neural encoding: the stimulus should be accurately represented in the neural responses. We use this criterion to design the optimal receptive fields of a model visual system. Since reconstruction fidelity is an ensemble average over signals and noise, the statistics of natural stimuli play a central role. We compare our results with those of similar studies which apply optimization principles based on information theory.
statistics of natural stimuli, model visual system, Neural biology, neural responses, optimal receptive fields, Theory of error-correcting codes and error-detecting codes, neural encoding
statistics of natural stimuli, model visual system, Neural biology, neural responses, optimal receptive fields, Theory of error-correcting codes and error-detecting codes, neural encoding
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