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Deep Photometric Stereo Networks for Determining Surface Normal and Reflectances

Hiroaki Santo, Masaki Samejima, Yusuke Sugano, Boxin Shi, Yasuyuki Matsushita

2020IEEE Transactions on Pattern Analysis and Machine Intelligence28 citationsDOIOpen Access PDF

Abstract

This article presents a photometric stereo method based on deep learning. One of the major difficulties in photometric stereo is designing an appropriate reflectance model that is both capable of representing real-world reflectances and computationally tractable for deriving surface normal. Unlike previous photometric stereo methods that rely on a simplified parametric image formation model, such as the Lambert's model, the proposed method aims at establishing a flexible mapping between complex reflectance observations and surface normal using a deep neural network. In addition, the proposed method predicts the reflectance, which allows us to understand surface materials and to render the scene under arbitrary lighting conditions. As a result, we propose a deep photometric stereo network (DPSN) that takes reflectance observations under varying light directions and infers the surface normal and reflectance in a per-pixel manner. To make the DPSN applicable to real-world scenes, a dataset of measured BRDFs (MERL BRDF dataset) has been used for training the network. Evaluation using simulation and real-world scenes shows the effectiveness of the proposed approach in estimating both surface normal and reflectances.

Topics & Concepts

Photometric stereoBidirectional reflectance distribution functionArtificial intelligenceComputer scienceReflectivityComputer visionSurface (topology)Artificial neural networkDeep learningNormalParametric statisticsPixelRemote sensingImage (mathematics)GeologyMathematicsOpticsGeometryPhysicsStatisticsComputer Graphics and Visualization TechniquesAdvanced Vision and ImagingImage Enhancement Techniques
Deep Photometric Stereo Networks for Determining Surface Normal and Reflectances | Litcius