The objective of this work is classifying texture from
a single image under unknown lighting conditions. The
current and successful approach to this task is to treat it
as a statistical learning problem and learn a classifier
from a set of training images, but this requires a sufficient number and variety of training images.
We show that the number of training images required
can be drastically reduced (to as few as three) by
synthesizing additional training data using photometric
stereo. We demonstrate the method on the PhoTex and
ALOT texture databases. Despite the limitations of photometric stereo, the resulting classification performance
surpasses the state of the art results.
@InProceedings{TarghiICPR2008,
author = "Targhi, A. T. and Geusebroek, J. M. and Zisserman, A.",
title = "Texture Classification with Minimal Training Images",
booktitle = "IEEE International Conference on Pattern Recognition",
year = "2008",
url = "https://ivi.fnwi.uva.nl/isis/publications/2008/TarghiICPR2008",
pdf = "https://ivi.fnwi.uva.nl/isis/publications/2008/TarghiICPR2008/TarghiICPR2008.pdf"
}