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Soft-biometrics encoding conditional GAN for synthesis of NIR periocular images

机译:编码条件GaN的软生物学测量术治疗NIR外观图像

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摘要

Soft-Biometric information, such as gender, has great potential for applications in security, forensics and marketing. Unfortunately, there are few gender-labelled databases available which make state of the art techniques, such as deep learning, difficult to use. An alternative source of data to train these algorithms are synthetic images. Methods based on Generative Adversarial Network are widely used for generating synthetic images. However, low features, such as gender, are not preserved in the images generated by these methods. In this paper, a novel GAN-based algorithm that preserves gender information while generating synthetic images is presented. It uses a latent vector that encodes gender information within the conditional GAN algorithm. Resulting synthetic images were tested using a gender classifier algorithm (CNN). Experiments demonstrate that the proposed method can be a useful tool for the synthesis of gender-labelled images to be used in training Deep Learning gender-classification algorithms. As an additional contribution a novel person-disjoint gender labelled dataset is presented (UNAB-Gender). (C) 2019 Elsevier B.V. All rights reserved.
机译:软生物识别信息,如性别,在安全,取证和营销中的应用具有很大的潜力。不幸的是,很少有性别标记的数据库可用,使得最先进的技术,例如深度学习,难以使用。培训这些算法的替代数据来源是合成图像。基于生成的对抗网络的方法广泛用于生成合成图像。然而,低特征,例如性别,不保留在这些方法生成的图像中。本文介绍了一种新的GaN基算法,其在产生合成图像的同时保留性别信息。它使用一个潜在的矢量,该潜伏矢量编码条件GaN算法内的性别信息。使用性别分类器算法(CNN)测试产生的合成图像。实验表明,所提出的方法可以是合成性别标记的图像的有用工具,以用于训练深度学习性别分类算法。作为额外的贡献,提出了一种新的人脱编性别标记的数据集(Unab-性别)。 (c)2019 Elsevier B.v.保留所有权利。

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