Human-Face Image Retrieving Based Texture Feature Extraction Method

Shaimaa Hameed Shaker
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Abstract

The face image retrieval solutions are widely studied, Although it deal with different facial features and difficulties to retrieve facial images due to the similarity of these features. This paper introduces a solution of human face-images retrieval based on a combination feature extraction methods where there are some challenges related with human-face image detection and then retrieving. Human face-images retrieving used in various fields like justification, Criminal Evidence and law inspections and robotic intelligence. The research-proposal contributes to conquer on a number of confronts in images of human-face detections then accurate retrieving in acceptable time. So this work deals with getting higher rate of recognition using a combination method of Gray-Level-Co-occurrence-Matrix(GLCM) and Local-Binary-Patterns (LBP) as feature-descriptors and classifiers to develop face-image recognition. First of all some previous processing techniques of image to detect the centre of face image then GLCM calculation method involves process of gray image, after that a number of statistical-texture attributes and 2nd order-attributes are obtained. The LBP technique acts as feature extraction after the representation of a human-face image, and finally the classification. The histograms are finding of blocks of an image of human-face. Then retrieve human-face image based minimum difference between attributes of a strange human-face image with the features of familiar images. All findings of this work were evaluate using MSE, Chi-square test and PSNR. Olivetti Research Laboratory ORL human-face images dataset used in this proposal. The experiments showed that the combination technique detecting the human-faces grows accuracy rate, and effectiveness. The results show increase in recognition exactitude to be 98%.
基于人脸图像检索的纹理特征提取方法
人脸图像检索的解决方案得到了广泛的研究,但它涉及到不同的人脸特征,并且由于这些特征的相似性使得人脸图像检索困难。针对人脸图像检测和检索存在的问题,提出了一种基于组合特征提取方法的人脸图像检索解决方案。人脸图像检索应用于各种领域,如辩护、刑事证据和法律检查以及机器人智能。该研究方案有助于在可接受的时间内,克服人脸图像检测中存在的许多对抗问题,并进行准确的检索。因此,本文研究了将灰度共现矩阵(GLCM)和局部二值模式(LBP)作为特征描述符和分类器的组合方法来提高人脸图像的识别率。首先利用以往的一些图像处理技术来检测人脸图像的中心,然后利用GLCM计算方法对灰度图像进行处理,得到一些统计纹理属性和二阶属性。LBP技术在对人脸图像进行表征后进行特征提取,最后进行分类。直方图是对人脸图像的块的发现。然后根据陌生人脸图像与熟悉人脸图像的特征之间的最小属性差来检索人脸图像。所有研究结果均采用MSE、卡方检验和PSNR进行评价。本提案中使用的Olivetti研究实验室ORL人脸图像数据集。实验表明,该组合技术提高了人脸检测的准确率和有效性。结果表明,识别正确率提高了98%。
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