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Gender and ethnicity classification of Iris images using deep class-encoder

机译:使用深度分类编码器对虹膜图像进行性别和种族分类

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摘要

Soft biometric modalities have shown their utility in different applications including reducing the search space significantly. This leads to improved recognition performance, reduced computation time, and faster processing of test samples. Some common soft biometric modalities are ethnicity, gender, age, hair color, iris color, presence of facial hair or moles, and markers. This research focuses on performing ethnicity and gender classification on iris images. We present a novel supervised auto-encoder based approach, Deep Class-Encoder, which uses class labels to learn discriminative representation for the given sample by mapping the learned feature vector to its label. The proposed model is evaluated on two datasets each for ethnicity and gender classification. The results obtained using the proposed Deep Class-Encoder demonstrate its effectiveness in comparison to existing approaches and state-of-the-art methods.
机译:软生物识别模式已显示出它们在不同应用中的效用,包括显着减少搜索空间。这样可以提高识别性能,减少计算时间,并更快地处理测试样品。一些常见的软生物特征识别方法是种族,性别,年龄,头发颜色,虹膜颜色,面部毛发或痣的存在以及标记。这项研究的重点是在虹膜图像上进行种族和性别分类。我们提出了一种新颖的基于监督的自动编码器的方法,即深度类编码器,该方法使用类标签通过将学习到的特征向量映射到其标签来学习给定样本的判别表示。对两个种族和性别分类的数据集对提出的模型进行了评估。与现有方法和最新方法相比,使用拟议的深度类编码器获得的结果证明了其有效性。

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