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Metric-Promoted Siamese Network for Gender Classification

机译:公制促进的性别分类暹罗网络

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Gender classification is a fundamental and important application in computer vision, and it has become a research hotspot. Real-world applications require gender classification in unconstrained conditions where traditional methods are not appropriate. This paper proposes a Deep Convolutional Neural Network for feature extraction together with fully-connected layers for metric learning. A Siamese network is built for similarity measuring to promote the performance of classification. Extensive experiments on several databases demonstrate that a significant improvement can be obtained for gender classification tasks in both constrained and unconstrained conditions.
机译:性别分类是计算机愿景的基本和重要应用,已成为一个研究热点。现实世界应用需要在传统方法不合适的不受约束条件下进行性别分类。本文提出了一种深度卷积神经网络,用于特征提取以及全连接层,用于度量学习。建立了暹罗网络以促进分类性能的相似度测量。关于若干数据库的广泛实验表明,在受约束和无约束条件下,可以获得对性别分类任务的显着改进。

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