Information-theoretic Dictionary Learning for Image Classification
Computer Vision and Pattern Recognition
2015-03-20 v1 Information Theory
math.IT
Machine Learning
Abstract
We present a two-stage approach for learning dictionaries for object classification tasks based on the principle of information maximization. The proposed method seeks a dictionary that is compact, discriminative, and generative. In the first stage, dictionary atoms are selected from an initial dictionary by maximizing the mutual information measure on dictionary compactness, discrimination and reconstruction. In the second stage, the selected dictionary atoms are updated for improved reconstructive and discriminative power using a simple gradient ascent algorithm on mutual information. Experiments using real datasets demonstrate the effectiveness of our approach for image classification tasks.
Cite
@article{arxiv.1208.3687,
title = {Information-theoretic Dictionary Learning for Image Classification},
author = {Qiang Qiu and Vishal M. Patel and Rama Chellappa},
journal= {arXiv preprint arXiv:1208.3687},
year = {2015}
}