Artigo Acesso aberto Revisado por pares

Natural image statistics and efficient coding

1996; Taylor & Francis; Volume: 7; Issue: 2 Linguagem: Inglês

10.1088/0954-898x_7_2_014

ISSN

1361-6536

Autores

Bruno A. Olshausen, David J. Field,

Tópico(s)

Cell Image Analysis Techniques

Resumo

Natural images contain characteristic statistical regularities that set them apart from purely random images. Understanding what these regularities are can enable natural images to be coded more efficiently. In this paper, we describe some of the forms of structure that are contained in natural images, and we show how these are related to the response properties of neurons at early stages of the visual system. Many of the important forms of structure require higher-order (i.e. more than linear, pairwise) statistics to characterize, which makes models based on linear Hebbian learning, or principal components analysis, inappropriate for finding efficient codes for natural images. We suggest that a good objective for an efficient coding of natural scenes is to maximize the sparseness of the representation, and we show that a network that learns sparse codes of natural scenes succeeds in developing localized, oriented, bandpass receptive fields similar to those in the mammalian striate cortex.This paper was presented at the Workshop on Information Theory and the Brain, held at the University of Stirling, UK, on 4–5 September 1995.

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