TV-GAN:基于生成对抗网络的热可见人脸识别

Teng Zhang, A. Wiliem, Siqi Yang, B. Lovell
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引用次数: 91

摘要

这项工作解决了在非光环境下使用热像仪传感器捕获的图像的人脸识别任务。虽然它可以大大增加当前安全监控系统的范围和效益,但与可见光域(VLD)的人脸识别任务相比,使用热图像执行这样的任务是一个具有挑战性的问题。这部分是由于与VLD数据相比,收集的热图像数据量要少得多。不幸的是,将现有的使用VLD数据训练的非常强大的人脸识别模型直接应用到热图像数据中不会产生令人满意的性能。这是由于热成像和VLD图像之间存在域间隙。为此,我们提出了一种热可见生成对抗网络(TV-GAN),该网络能够将热人脸图像转换为相应的VLD图像,同时保持足够的身份信息,使现有的VLD人脸识别模型能够进行识别。图1给出了一些示例。与以前的方法不同,我们提出的TV-GAN使用显式闭集人脸识别损失来正则化鉴别器网络训练。这些信息将以梯度损失的形式传递到发电机网络中。在实验中,我们表明,通过对鉴别器网络使用这种额外的显式正则化,TV-GAN能够在翻译之前未见过的人的热图像时保留更多的身份信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TV-GAN: Generative Adversarial Network Based Thermal to Visible Face Recognition
This work tackles the face recognition task on images captured using thermal camera sensors which can operate in the non-light environment. While it can greatly increase the scope and benefits of the current security surveillance systems, performing such a task using thermal images is a challenging problem compared to face recognition task in the Visible Light Domain (VLD). This is partly due to the significantly smaller amount of thermal imagery data collected compared to the VLD data. Unfortunately, direct application of the existing very strong face recognition models trained using VLD data into the thermal imagery data will not produce a satisfactory performance. This is due to the existence of the domain gap between the thermal and VLD images. To this end, we propose a Thermal-to-Visible Generative Adversarial Network (TV-GAN) that is able to transform thermal face images into their corresponding VLD images whilst maintaining identity information which is sufficient enough for the existing VLD face recognition models to perform recognition. Some examples are presented in Figure 1. Unlike the previous methods, our proposed TV-GAN uses an explicit closed-set face recognition loss to regularize the discriminator network training. This information will then be conveyed into the generator network in the form of gradient loss. In the experiment, we show that by using this additional explicit regularization for the discriminator network, the TV-GAN is able to preserve more identity information when translating a thermal image of a person which is not seen before by the TV-GAN.
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