We present an object recognition approach using
higher-order color invariant features with an entropy-based similarity measure. Entropic graphs offer an unparameterized alternative to common entropy estimation techniques, such as a histogram or assuming a probability distribution. An entropic graph estimates entropy
from a spanning graph structure of sample data. We extract
color invariant features from object images invariant to illumination
changes in intensity, viewpoint, and shading. The Henze-Penrose similarity measure is used to estimate the similarity of two images.
Our method is evaluated on the ALOI collection, a large collection of
object images. This object image collection consists of 1000 objects
recorded under various imaging circumstances. The proposed
method is shown to be effective under a wide variety of imaging conditions.
@Article{vanGemertIJIST2006,
author = "van Gemert, J. C. and Burghouts, G. J. and Seinstra, F. J. and Geusebroek, J. M.",
title = "Color Invariant Object Recognition Using Entropic Graphs",
journal = "International Journal of Imaging Systems and Technology",
number = "5",
volume = "16",
pages = "146--153",
year = "2006",
url = "https://ivi.fnwi.uva.nl/isis/publications/2006/vanGemertIJIST2006",
pdf = "https://ivi.fnwi.uva.nl/isis/publications/2006/vanGemertIJIST2006/vanGemertIJIST2006.pdf",
has_image = 1
}