Low level visual features support robust material perception in the judgement of metallicity

Abstract The human visual system is able to rapidly and accurately infer the material properties of objects and surfaces in the world. Yet an inverse optics approach—estimating the bi-directional reflectance distribution function of a surface, given its geometry and environment, and relating this to...

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Main Authors: Joshua S. Harvey, Hannah E. Smithson
Format: Article
Language:English
Published: Nature Publishing Group 2021-08-01
Series:Scientific Reports
Online Access:https://doi.org/10.1038/s41598-021-95416-6
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spelling doaj-ce486da491934597a12189c111a2f0a82021-08-15T11:23:44ZengNature Publishing GroupScientific Reports2045-23222021-08-0111111510.1038/s41598-021-95416-6Low level visual features support robust material perception in the judgement of metallicityJoshua S. Harvey0Hannah E. Smithson1Neuroscience Institute, NYU Langone HealthDepartment of Experimental Psychology, Oxford UniversityAbstract The human visual system is able to rapidly and accurately infer the material properties of objects and surfaces in the world. Yet an inverse optics approach—estimating the bi-directional reflectance distribution function of a surface, given its geometry and environment, and relating this to the optical properties of materials—is both intractable and computationally unaffordable. Rather, previous studies have found that the visual system may exploit low-level spatio-chromatic statistics as heuristics for material judgment. Here, we present results from psychophysics and modeling that supports the use of image statistics heuristics in the judgement of metallicity—the quality of appearance that suggests an object is made from metal. Using computer graphics, we generated stimuli that varied along two physical dimensions: the smoothness of a metal object, and the evenness of its transparent coating. This allowed for the exploration of low-level image statistics, whilst ensuring that each stimulus was a naturalistic, physically plausible image. A conjoint-measurement task decoupled the contributions of these dimensions to the perception of metallicity. Low-level image features, as represented in the activations of oriented linear filters at different spatial scales, were found to correlate with the dimensions of the stimulus space, and decision-making models using these activations replicated observer performance in perceiving differences in metal smoothness and coating bumpiness, and judging metallicity. Importantly, the performance of these models did not deteriorate when objects were rotated within their simulated scene, with corresponding changes in image properties. We therefore conclude that low-level image features may provide reliable cues for the robust perception of metallicity.https://doi.org/10.1038/s41598-021-95416-6
collection DOAJ
language English
format Article
sources DOAJ
author Joshua S. Harvey
Hannah E. Smithson
spellingShingle Joshua S. Harvey
Hannah E. Smithson
Low level visual features support robust material perception in the judgement of metallicity
Scientific Reports
author_facet Joshua S. Harvey
Hannah E. Smithson
author_sort Joshua S. Harvey
title Low level visual features support robust material perception in the judgement of metallicity
title_short Low level visual features support robust material perception in the judgement of metallicity
title_full Low level visual features support robust material perception in the judgement of metallicity
title_fullStr Low level visual features support robust material perception in the judgement of metallicity
title_full_unstemmed Low level visual features support robust material perception in the judgement of metallicity
title_sort low level visual features support robust material perception in the judgement of metallicity
publisher Nature Publishing Group
series Scientific Reports
issn 2045-2322
publishDate 2021-08-01
description Abstract The human visual system is able to rapidly and accurately infer the material properties of objects and surfaces in the world. Yet an inverse optics approach—estimating the bi-directional reflectance distribution function of a surface, given its geometry and environment, and relating this to the optical properties of materials—is both intractable and computationally unaffordable. Rather, previous studies have found that the visual system may exploit low-level spatio-chromatic statistics as heuristics for material judgment. Here, we present results from psychophysics and modeling that supports the use of image statistics heuristics in the judgement of metallicity—the quality of appearance that suggests an object is made from metal. Using computer graphics, we generated stimuli that varied along two physical dimensions: the smoothness of a metal object, and the evenness of its transparent coating. This allowed for the exploration of low-level image statistics, whilst ensuring that each stimulus was a naturalistic, physically plausible image. A conjoint-measurement task decoupled the contributions of these dimensions to the perception of metallicity. Low-level image features, as represented in the activations of oriented linear filters at different spatial scales, were found to correlate with the dimensions of the stimulus space, and decision-making models using these activations replicated observer performance in perceiving differences in metal smoothness and coating bumpiness, and judging metallicity. Importantly, the performance of these models did not deteriorate when objects were rotated within their simulated scene, with corresponding changes in image properties. We therefore conclude that low-level image features may provide reliable cues for the robust perception of metallicity.
url https://doi.org/10.1038/s41598-021-95416-6
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