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Periocular Gender Classification using Global ICA Features for Poor Quality Images

机译:使用全球ICA功能的围眼性别分类,适用于劣质图像

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In recent years, the research over emerging trends of biometric has grabbed a lot of attention. Periocular biometric is one such field. Researchers have made attempts to extract computationally intensive local features from high quality periocular images. In contrast, this paper proposes a novel approach of extracting global features from periocular region of poor quality grayscale images for gender classification. Global gender features are extracted using independent component analysis and are evaluated using conventional neural network techniques, and further their performance is compared. All relevant experiments are held on periocular region cropped from FERET face database. The results exhibit promising classification accuracy establishing the fact that the approach can work in fusion with existing facial gender classification systems to help in improving its accuracy.
机译:近年来,对生物统计学趋势的研究造成了很多关注。周边围绕生物识别是一种这样的领域。研究人员已经尝试从高质量的围眼镜图像中提取计算密集的局部特征。相比之下,本文提出了一种提取全球特征的新方法,从劣质灰度图像的周边地区进行性别分类。使用独立分量分析提取全局性别功能,并使用传统的神经网络技术进行评估,并比较它们的性能。所有相关实验都持有来自Feret Face Database的围绕区域的围面区域。结果表现出有希望的分类准确性,即该方法可以在融合中与现有的面部性别分类系统一起工作,以帮助提高其准确性。

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