Clustering and Bayesian network for image of faces classification
Khlifia Jayech, Mohamed Ali Mahjoub

TL;DR
This paper introduces a novel face image classification method combining tangent distance, k-means clustering, and Bayesian networks, demonstrating improved accuracy over other classifiers.
Contribution
The paper proposes a new approach integrating tangent distance, clustering, and Bayesian networks for enhanced face image classification accuracy.
Findings
FAN classifier outperforms GFAN, NB, GTAN, and TAN in accuracy.
Using tangent distance reduces classification errors.
Clustering features improve face image classification.
Abstract
In a content based image classification system, target images are sorted by feature similarities with respect to the query (CBIR). In this paper, we propose to use new approach combining distance tangent, k-means algorithm and Bayesian network for image classification. First, we use the technique of tangent distance to calculate several tangent spaces representing the same image. The objective is to reduce the error in the classification phase. Second, we cut the image in a whole of blocks. For each block, we compute a vector of descriptors. Then, we use K-means to cluster the low-level features including color and texture information to build a vector of labels for each image. Finally, we apply five variants of Bayesian networks classifiers (Na\"ive Bayes, Global Tree Augmented Na\"ive Bayes (GTAN), Global Forest Augmented Na\"ive Bayes (GFAN), Tree Augmented Na\"ive Bayes for each…
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