Gender recognition from face images with trainable COSFIRE filters

G. Azzopardi, Antonio Greco, M. Vento
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引用次数: 35

Abstract

Gender recognition from face images is an important application in the fields of security, retail advertising and marketing. We propose a novel descriptor based on COSFIRE filters for gender recognition. A COSFIRE filter is trainable, in that its selectivity is determined in an automatic configuration process that analyses a given prototype pattern of interest. We demonstrate the effectiveness of the proposed approach on a new dataset called GENDER-FERET with 474 training and 472 test samples and achieve an accuracy rate of 93.7%. It also outperforms an approach that relies on handcrafted features and an ensemble of classifiers. Furthermore, we perform another experiment by using the images of the Labeled Faces in the Wild (LFW) dataset to train our classifier and the test images of the GENDER-FERET dataset for evaluation. This experiment demonstrates the generalization ability of the proposed approach and it also outperforms two commercial libraries, namely Face++ and Luxand.
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使用可训练的COSFIRE过滤器对人脸图像进行性别识别
人脸图像的性别识别在安防、零售广告和营销等领域有着重要的应用。我们提出了一种基于COSFIRE滤波器的性别识别描述符。COSFIRE过滤器是可训练的,因为它的选择性是在分析感兴趣的给定原型模式的自动配置过程中确定的。我们在一个名为GENDER-FERET的新数据集上验证了该方法的有效性,该数据集包含474个训练样本和472个测试样本,准确率达到93.7%。它也优于依赖手工特征和分类器集合的方法。此外,我们进行了另一个实验,使用标记的面孔在野外(LFW)数据集的图像来训练我们的分类器和性别- feret数据集的测试图像进行评估。实验证明了该方法的泛化能力,并且优于face++和Luxand这两个商业库。
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