Data Augmentation for Small Face Datasets and Face Verification by Generative Adversarial Networks Inversion

Dinh Tan Nguyen, Cao Truong Tran, Trung Thanh Nguyen, Cao Bao Hoang, Van Phu Luu, Ba Ngoc Nguyen, Pou Ian Cheong
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引用次数: 2

Abstract

One of the most challenging issues in the utilisation of machine learning in face datasets is the lack of data, especially when there is inadequate collection of datasets. On one hand, the cost of collecting new face images could be very costly and it depend heavily on the resources and the availability of the data collection. On the other hand, insufficient face datasets could lead to over-fitting issues in any deep learning models especially in the face verification tasks as it requires adequate amount of face dataset. Nevertheless, Generative Adversarial Networks (GANs) offers a better way to augment the data by generating synthetic face images based on the close-distributed pixels of real images. With this intention, GAN inversion was introduced to produce better performance comparing to the previous GAN concepts; by inverting a given face image back into the latent space of a pretrained GAN model with low loss transmissions. This paper demonstrates the feasibility of GAN inversion during the face verification process. We will also illustrate the comparison between previous GAN models, and traditional machine learning augmentation methods in face images generation.
小人脸数据集的数据增强与生成对抗网络反演人脸验证
在人脸数据集中使用机器学习最具挑战性的问题之一是缺乏数据,特别是在数据集收集不足的情况下。一方面,采集新人脸图像的成本非常高,这在很大程度上取决于数据采集的资源和可用性。另一方面,人脸数据集不足可能导致任何深度学习模型的过拟合问题,特别是在人脸验证任务中,因为它需要足够数量的人脸数据集。然而,生成对抗网络(GANs)提供了一种更好的方法,通过基于真实图像的紧密分布像素生成合成人脸图像来增强数据。出于这个目的,引入了GAN反转,与以前的GAN概念相比,产生了更好的性能;通过将给定的人脸图像反演回具有低损耗传输的预训练GAN模型的潜在空间。本文论证了GAN反演在人脸验证过程中的可行性。我们还将说明以前的GAN模型与传统的机器学习增强方法在人脸图像生成中的比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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