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首页> 外文期刊>Journal of Real-Time Image Processing >Automatic Gender Recognition Based On Pixel-pattern-based Texture Feature
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Automatic Gender Recognition Based On Pixel-pattern-based Texture Feature

机译:基于像素模式纹理特征的自动性别识别

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摘要

A pixel-pattern-based texture feature (PPBTF) is proposed for real-time gender recognition. A gray-scale image is transformed into a pattern map where edges and lines are to be used for characterizing the texture information. On the basis of the pattern map, a feature vector is comprised the numbers of the pixels belonging to each pattern. We use the image basis functions obtained by principal component analysis (PCA) as the templates for pattern matching. The characteristics of the feature are comprehensively analyzed through an application to gender recognition. Adaboost is used to select the most discriminative feature subset, and support vector machine (SVMs) is adopted for classification. Performed on frontal images from FERET database, the comparisons with Gabor show that PPBTF is a significant facial representation, quite effective and speedier in computation.
机译:提出了一种基于像素模式的纹理特征(PPBTF)用于实时性别识别。灰度图像被转换为​​图案图,其中边缘和线条将用于表征纹理信息。基于图案图,特征向量包括属于每个图案的像素的数量。我们使用通过主成分分析(PCA)获得的图像基函数作为模式匹配的模板。通过将其应用于性别识别,可以对特征的特征进行全面分析。 Adaboost用于选择最具区分性的特征子集,并采用支持向量机(SVM)进行分类。对来自FERET数据库的正面图像执行的结果与Gabor的比较表明,PPBTF是一种重要的面部表情,在计算中非常有效且速度更快。

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