Structure Destruction and Content Combination for Face Anti-Spoofing

Ke-Yue Zhang, Taiping Yao, Jian Zhang, Shice Liu, Bangjie Yin, Shouhong Ding, Jilin Li
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引用次数: 19

Abstract

In pursuit of consolidating the face verification systems, prior face anti-spoofing studies excavate the hidden cues in original images to discriminate real person and diverse attack types with the assistance of auxiliary supervision. However, limited by the following two inherent disturbances in their training process: 1) Complete facial structure in a single image. 2) Implicit subdomains in the whole dataset, these methods are prone to stick on memorization of the entire training dataset and show sensitivity to non-homologous domain distribution. In this paper, we propose Structure Destruction Module and Content Combination Module to address these two limitations separately. The former mechanism destroys images into patches to construct a non-structural input, while the latter mechanism recombines patches from different subdomains or classes into a mixup construct. Based on this splitting-and-splicing operation, Local Relation Modeling Module is further proposed to model the second-order relationship between patches. We evaluate our method on extensive public datasets and promising experimental results to demonstrate the reliability of our method against the state-of-the-art competitors.
人脸防欺骗的结构破坏与内容组合
为了巩固人脸验证系统,之前的人脸反欺骗研究在辅助监督的帮助下,挖掘原始图像中隐藏的线索来区分真人和各种攻击类型。然而,它们在训练过程中受到以下两个固有干扰的限制:1)单个图像中完整的面部结构。2)整个数据集中的隐式子域,这些方法容易依赖于整个训练数据集的记忆,并且对非同源域分布表现出敏感性。本文分别提出了结构破坏模块和内容组合模块来解决这两个问题。前一种机制是将图像分解成小块来构造非结构输入,后一种机制是将不同子域或类的小块重新组合成混合构造。在此基础上,进一步提出了局部关系建模模块(Local Relation Modeling Module),对patch之间的二阶关系进行建模。我们在广泛的公共数据集和有希望的实验结果上评估我们的方法,以证明我们的方法在最先进的竞争对手面前的可靠性。
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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