新生儿面部识别的纹理特征提取方法分析

U. Rahamathunnisa, K. Sudhakar
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引用次数: 1

摘要

利用指纹、掌纹、虹膜、面部和视网膜等生物识别方法来识别参与伪造的人。人脸生物识别技术被广泛应用于超市、火车站、机场、医院等众多应用领域,以监控和控制伪造。在目前的情况下,由于伪造的增加,人脸识别变得越来越重要。为了避免这类犯罪,人脸识别系统显得尤为重要。特征提取是人脸识别系统进一步分析的重要步骤。在文献中有许多人脸识别系统的特征提取算法。人脸识别系统的难点在于如何提高识别的准确性。在选择特征提取算法时,必须考虑能够提供更好的精度和更少的计算时间的参数。从图像中提取的特征构成分类的基础,提取的特征用于训练和测试目的。本文分析了局部二值模式(LBP)、主成分分析(PCA)和灰度共生矩阵(GLCM)等特征提取方法。局部二进制模式生成LBP描述符。采用主成分分析法计算特征面和特征向量,灰度共生矩阵生成二阶统计特征。将这些方法应用于不同表情的新生婴儿图像。将提取的特征作为支持向量机分类的输入。实验结果表明,与其他特征提取方法相比,主成分分析方法的准确率达到91%,具有更好的识别率和更少的计算时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis on Texture Feature Extraction Methods for Face Recognition in New Born
Biometric methods such as fingerprint, palm print, iris, face and retina are used to detect the persons who involved in the forgery. The face biometric is the most important and widely used in many applications area such as supermarket, railway station, airport, hospitals and other application areas to monitor and control the forgeries. In the present scenario, face recognition gained its importance due to increase in forgeries. To avoid such crimes, face recognition system is given most importance. Feature extraction is an important step for further analysis in face recognition systems. There are many feature extraction algorithms for face recognition systems in the literature. The challenge is to provide better accuracy in face recognition system. While choosing the feature extraction algorithm, we have to consider the parameters which provides better accuracy and less computational time. The features extracted from an image form the basis for classification and the extracted features are used for training and testing purposes. This paper analyses various feature extraction methods such as Local Binary Pattern (LBP), Principal Component Analysis (PCA) and Gray Level Co-occurrence Matrix (GLCM). The Local Binary Pattern generates LBP descriptors. Eigen face and Eigenvectors are computed by Principal Component Analysis and Gray Level Co-occurrence Matrix generates the second order statistical features. These methods are applied on the new born baby images with different expression. The extracted features are given as an input for the Support Vector Machine for classification. The experimental results have shown that the Principal component analysis method provides an accuracy of 91 % and it provided better recognition rate and less computation time when compared with the other feature extraction methods.
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