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ICPR
2002
IEEE

Self-Calibration and Neural Network Implementation of Photometric Stereo

14 years 5 months ago
Self-Calibration and Neural Network Implementation of Photometric Stereo
This paper describes a new approach to neural network implementation of photometric stereo for a rotational object with non-uniform reflectance factor. Three input images are acquired under different conditions of illumination. One illumination direction is chosen to be aligned with the viewing direction. We require no separate calibration object to estimate the associated reflectance maps. Instead, self-calibration is done using controlled rotation of the target object itself. Self-calibration exploits both geometric and photometric constraints. A radial basis function (RBF) neural network is used to do non-parametric functional approximation. The neural network training data are obtained from rotations of the target object. Further, the method makes it possible to determine whether or not a given boundary point lies on an occluding boundary. The approach is empirical without needing a distinct calibration object and without making any specific assumptions about the surface reflectan...
Yuji Iwahori, Yumi Watanabe, Robert J. Woodham, Ak
Added 09 Nov 2009
Updated 09 Nov 2009
Type Conference
Year 2002
Where ICPR
Authors Yuji Iwahori, Yumi Watanabe, Robert J. Woodham, Akira Iwata
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