属性导向的深度极化热可见人脸识别

S. M. Iranmanesh, N. Nasrabadi
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引用次数: 8

摘要

在本文中,我们提出了一个属性导向的深度耦合学习框架来解决极化热人脸照片与可见人脸库的匹配问题。耦合框架包含两个子网络,一个专用于可见光谱,另一个专用于极化热光谱。每个子网络由生成对抗网络(GAN)架构组成。我们提出了一种新的属性导向耦合生成对抗网络(AGC-GAN)架构,该架构利用人脸属性来提高热可见人脸识别性能。本文提出的AGC-GAN利用人脸属性,并利用多个损失函数在公共嵌入子空间中学习丰富的判别特征。为了在保留判别信息的同时实现真实的照片重建,我们还在耦合损失函数中添加了感知损失项。通过烧蚀实验证明了不同损失函数对优化方法的有效性。此外,利用极化数据集证明了该模型与目前最先进模型相比的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attribute-Guided Deep Polarimetric Thermal-to-visible Face Recognition
In this paper, we present an attribute-guided deep coupled learning framework to address the problem of matching polarimetric thermal face photos against a gallery of visible faces. The coupled framework contains two sub-networks, one dedicated to the visible spectrum and the second sub-network dedicated to the polarimetric thermal spectrum. Each sub-network is made of a generative adversarial network (GAN) architecture. We propose a novel Attribute-Guided Coupled Generative Adversarial Network (AGC-GAN) architecture which utilizes facial attributes to improve the thermal-to-visible face recognition performance. The proposed AGC-GAN exploits the facial attributes and leverages multiple loss functions in order to learn rich discriminative features in a common embedding subspace. To achieve a realistic photo reconstruction while preserving the discriminative information, we also add a perceptual loss term to the coupling loss function. An ablation study is performed to show the effectiveness of different loss functions for optimizing the proposed method. Moreover, the superiority of the model compared to the state-ofthe-art models is demonstrated using polarimetric dataset.
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