Wavelet-Based Multiscale Adaptive LBP with Directional Statistical Features for Recognizing Artificial Faces
Author(s) -
Abdallah A. Mohamed,
Roman V. Yampolskiy
Publication year - 2012
Publication title -
isrn machine vision
Language(s) - English
Resource type - Journals
eISSN - 2090-780X
pISSN - 2090-7796
DOI - 10.5402/2012/810304
Subject(s) - artificial intelligence , pattern recognition (psychology) , computer science , local binary patterns , feature extraction , preprocessor , wavelet , histogram , computer vision , facial recognition system , image (mathematics)
Recognizing avatar faces is a very important issue for the security of virtual worlds. In this paper, a novel face recognition technique based on the wavelet transform and the multiscale representation of the adaptive local binary pattern (ALBP) with directional statistical features is proposed to increase the accuracy rate of recognizing avatars in different virtual worlds. The proposed technique consists of three stages: preprocessing, feature extraction, and recognition. In the preprocessing and feature extraction stages, wavelet decomposition is used to enhance the common features of the same subject of images and the multiscale ALBP (MALBP) is used to extract representative features from each facial image. Then, in the recognition stage the wavelet MALBP (WMALBP) histogram dissimilarity with statistical features of each test image and each class model is used within the nearest neighbor classifier to improve the classification accuracy of the WMALBP. Experiments conducted on two virtual world avatar face image datasets show that our technique performs better than LBP, PCA, multiscale local binary pattern, ALBP, and ALBP with directional statistical features (ALBPF) in terms of the accuracy and the time required to classify each facial image to its subject.
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