We propose a multi-view photometric stereo technique that uses photometric normal consistency to jointly estimate surface position and orientation. The underlying scene representation is based on oriented points, yielding more flexibility compared to smoothly varying surfaces. We demonstrate that the often employed least squares error of the Lambertian image formation model fails for wide-baseline settings without known visibility information. We then introduce a multi-view normal consistency approach and demonstrate its efficiency on synthetic and real data. In particular, our approach is able to handle occlusion, shadows, and other sources of outliers
We address the problem of reconstructing 3D shapes from color data available in a sparse set of view...
The orientation of patches on the surface of an object can be determined from multiple images take...
We present a self-calibrating photometric stereo method. From a set of images taken from a fixed vie...
We present a novel multi-view photometric stereo technique that recovers the surface of textureless ...
We present a novel multi-view photometric stereo technique that recovers the surface of textureless ...
Scene reconstruction is one of the important problems in computer vision. One approach to scene reco...
Scene reconstruction is one of the important problems in computer vision. One approach to scene reco...
Abstract—We propose a method to obtain a complete and accurate 3D model from multiview images captur...
Classical uncalibrated Photometric Stereo approaches are mostly constrained to the static view assum...
We propose a robust uncalibrated multiview photometric stereo method for high quality 3D shape recon...
This paper describes a photometric stereo method that works with a wide range of surface reflectance...
This paper describes a photometric stereo method that works with a wide range of surface reflectance...
Traditional stereo techniques determine range by relating two images of an object viewed from diff...
International audienceIn this paper, we show how to estimate the normals of a 3D surface from a mini...
Conference of 15th International Conference on Computer Analysis of Images and Patterns, CAIP 2013 ;...
We address the problem of reconstructing 3D shapes from color data available in a sparse set of view...
The orientation of patches on the surface of an object can be determined from multiple images take...
We present a self-calibrating photometric stereo method. From a set of images taken from a fixed vie...
We present a novel multi-view photometric stereo technique that recovers the surface of textureless ...
We present a novel multi-view photometric stereo technique that recovers the surface of textureless ...
Scene reconstruction is one of the important problems in computer vision. One approach to scene reco...
Scene reconstruction is one of the important problems in computer vision. One approach to scene reco...
Abstract—We propose a method to obtain a complete and accurate 3D model from multiview images captur...
Classical uncalibrated Photometric Stereo approaches are mostly constrained to the static view assum...
We propose a robust uncalibrated multiview photometric stereo method for high quality 3D shape recon...
This paper describes a photometric stereo method that works with a wide range of surface reflectance...
This paper describes a photometric stereo method that works with a wide range of surface reflectance...
Traditional stereo techniques determine range by relating two images of an object viewed from diff...
International audienceIn this paper, we show how to estimate the normals of a 3D surface from a mini...
Conference of 15th International Conference on Computer Analysis of Images and Patterns, CAIP 2013 ;...
We address the problem of reconstructing 3D shapes from color data available in a sparse set of view...
The orientation of patches on the surface of an object can be determined from multiple images take...
We present a self-calibrating photometric stereo method. From a set of images taken from a fixed vie...