Wavelet-Based Multiscale Adaptive LBP with Directional Statistical Features for Recognizing Artificial Faces

Abdallah A. Mohamed, Roman V Yampolskiy
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引用次数: 5

Abstract

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.
基于方向统计特征的小波多尺度自适应LBP人脸识别
人脸识别是虚拟世界安全的一个重要问题。本文提出了一种基于小波变换和具有方向性统计特征的自适应局部二值模式(ALBP)多尺度表示的人脸识别技术,以提高不同虚拟世界中人物识别的准确率。该技术包括预处理、特征提取和识别三个阶段。在预处理和特征提取阶段,使用小波分解增强同一主体图像的共同特征,使用多尺度ALBP (MALBP)从每张人脸图像中提取代表性特征。然后,在识别阶段,在最近邻分类器中使用小波MALBP (WMALBP)直方图与每个测试图像和每个类别模型的统计特征的不相似度来提高WMALBP的分类精度。在两个虚拟世界头像人脸图像数据集上进行的实验表明,我们的技术在准确率和时间上都优于LBP、PCA、多尺度局部二值模式、ALBP和带方向统计特征的ALBP (ALBPF)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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