Abstract

Natural scenes are characterized by diverse image statistics, including various parameters of the luminance histogram, outputs of Gabor-like filters, and pairwise correlations between the filter outputs of different positions, orientations, and scales (Portilla–Simoncelli statistics). Some of these statistics capture the response properties of visual neurons. However, it remains unclear to what extent such statistics can explain neural responses to natural scenes and how neurons that are tuned to these statistics are distributed across the cortex. Using two-photon calcium imaging and an encoding-model approach, we addressed these issues in macaque visual areas V1 and V4. For each imaged neuron, we constructed an encoding model to mimic its responses to naturalistic videos. By extracting Portilla–Simoncelli statistics through outputs of both filters and filter correlations, and by computing an optimally weighted sum of these outputs, the model successfully reproduced responses in a subpopulation of neurons. We evaluated the selectivities of these neurons by quantifying the contributions of each statistic to visual responses. Neurons whose responses were mainly determined by Gabor-like filter outputs (low-level statistics) were abundant at most imaging sites in V1. In V4, the relative contribution of higher order statistics, such as cross-scale correlation, was increased. Preferred image statistics varied markedly across V4 sites, and the response similarity of two neurons at individual imaging sites gradually declined with increasing cortical distance. The results indicate that natural scene analysis progresses from V1 to V4, and neurons sharing preferred image statistics are locally clustered in V4.

Highlights

  • The visual system performs complex analyses of input images derived from natural scenes

  • As a step to extend our understanding of neuronal processing of the image statistics in more general natural scenes, we examined the effects of the PS statistics in naturalistic videos on the neuronal responses in V1 and V4

  • By combining two-photon calcium imaging and encodingmodel analysis, we characterized the response selectivities of neurons in V1 and V4 to PS statistics based on their responses to naturalistic videos

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Summary

Introduction

The visual system performs complex analyses of input images derived from natural scenes. A subset of the statistics can be extracted by Gabor-like filters, which analyze the spatial frequency and orientation of local regions of the image (spectral statistics). Important in determining the appearance of an image are the summary statistics of the luminance histogram (i.e., luminance distribution), such as the mean, variance, skewness, and kurtosis (marginal statistics; Motoyoshi et al 2007). The ensemble of these image statistics (hereafter referred to as Portilla–Simoncelli statistics, or PS statistics) was first proposed for texture analysis/synthesis (Portilla and Simoncelli 2000), and its extension works well for explaining the perception of complex natural scenes by human observers (Freeman and Simoncelli 2011)

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