arXiv Analytics

Sign in

arXiv:1607.03284 [cs.CV]AbstractReferencesReviewsResources

A Machine learning approach for Shape From Shading

Lyes Abada, Saliha Aouat

Published 2016-07-12Version 1

The aim of Shape From Shading (SFS) problem is to reconstruct the relief of an object from a single gray level image. In this paper we present a new method to solve the problem of SFS using Machine learning method. Our approach belongs to Local resolution category. The orientation of each part of the object is represented by the perpendicular vector to the surface (Normal Vector), this vector is defined by two angles SLANT and TILT, such as the TILT is the angle between the normal vector and Z-axis, and the SLANT is the angle between the the X-axis and the projection of the normal to the plane. The TILT can be determined from the gray level, the unknown is the SLANT. To calculate the normal of each part of the surface (pixel) a supervised Machine learning method has been proposed. This method divided into three steps: the first step is the preparation of the training data from 3D mathematical functions and synthetic objects. The second step is the creation of database of examples from 3D objects (off-line process). The third step is the application of test images (on-line process). The idea is to find for each pixel of the test image the most similar element in the examples database using a similarity value.

Comments: 2nd International Conference on Signal, Image, Vision and their Applications (SIVA'13), November 18-20, 2013 - Guelma, Algeria
Categories: cs.CV
Related articles: Most relevant | Search more
arXiv:2312.00184 [cs.CV] (Published 2023-11-30)
Galaxy Classification: A machine learning approach for classifying shapes using numerical data
arXiv:0810.2434 [cs.CV] (Published 2008-10-14)
Faster and better: a machine learning approach to corner detection
arXiv:1007.2958 [cs.CV] (Published 2010-07-17)
A Machine Learning Approach to Recovery of Scene Geometry from Images