Suppressing Spoof-Irrelevant Factors for Domain-Agnostic Face Anti-Spoofing

Face anti-spoofing aims to prevent false authentications of face recognition systems by distinguishing whether an image is originated from a human face or a spoof medium. In this work, we note that images from unseen domains having different spoof-irrelevant factors (e.g., background patterns and su...

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Main Authors: Taewook Kim, Yonghyun Kim
Format: Article
Language:English
Published: IEEE 2021-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9423958/
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spelling doaj-a2bb4699d3a94a8bb687d2c5b82f4a8d2021-06-21T23:00:55ZengIEEEIEEE Access2169-35362021-01-019869668697410.1109/ACCESS.2021.30776299423958Suppressing Spoof-Irrelevant Factors for Domain-Agnostic Face Anti-SpoofingTaewook Kim0https://orcid.org/0000-0002-9798-2105Yonghyun Kim1https://orcid.org/0000-0003-0038-7850Kakao Enterprise, Pohang, South KoreaKakao Enterprise, Pohang, South KoreaFace anti-spoofing aims to prevent false authentications of face recognition systems by distinguishing whether an image is originated from a human face or a spoof medium. In this work, we note that images from unseen domains having different spoof-irrelevant factors (e.g., background patterns and subject) induce domain shift between source and target distributions. Also, when the same SiFs are shared by the spoof and genuine images, they show a higher level of visual similarity and this hinders accurate face anti-spoofing. Hence, we aim to minimize the discrepancies among different domains via alleviating the effects of SiFs, and achieve improvements in generalization to unseen domains. To realize our goal, we propose a novel method called a Doubly Adversarial Suppression Network (DASN) that is trained to neglect the irrelevant factors and to focus more on faithful task-relevant factors. Our DASN consists of two types of adversarial learning schemes. In the first adversarial learning scheme, multiple SiFs are suppressed by deploying multiple discrimination heads that are trained against an encoder. In the second adversarial learning scheme, each of the discrimination heads is also adversarially trained to suppress a spoof factor, and the group of the secondary spoof classifier and the encoder aims to intensify the spoof factor by overcoming the suppression. We evaluate the proposed method on four public benchmark datasets, and achieve remarkable evaluation results in generalizing to unseen domains. The results demonstrate the effectiveness of the proposed method.https://ieeexplore.ieee.org/document/9423958/Presentation attackdomain generalizationadversarial learning
collection DOAJ
language English
format Article
sources DOAJ
author Taewook Kim
Yonghyun Kim
spellingShingle Taewook Kim
Yonghyun Kim
Suppressing Spoof-Irrelevant Factors for Domain-Agnostic Face Anti-Spoofing
IEEE Access
Presentation attack
domain generalization
adversarial learning
author_facet Taewook Kim
Yonghyun Kim
author_sort Taewook Kim
title Suppressing Spoof-Irrelevant Factors for Domain-Agnostic Face Anti-Spoofing
title_short Suppressing Spoof-Irrelevant Factors for Domain-Agnostic Face Anti-Spoofing
title_full Suppressing Spoof-Irrelevant Factors for Domain-Agnostic Face Anti-Spoofing
title_fullStr Suppressing Spoof-Irrelevant Factors for Domain-Agnostic Face Anti-Spoofing
title_full_unstemmed Suppressing Spoof-Irrelevant Factors for Domain-Agnostic Face Anti-Spoofing
title_sort suppressing spoof-irrelevant factors for domain-agnostic face anti-spoofing
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2021-01-01
description Face anti-spoofing aims to prevent false authentications of face recognition systems by distinguishing whether an image is originated from a human face or a spoof medium. In this work, we note that images from unseen domains having different spoof-irrelevant factors (e.g., background patterns and subject) induce domain shift between source and target distributions. Also, when the same SiFs are shared by the spoof and genuine images, they show a higher level of visual similarity and this hinders accurate face anti-spoofing. Hence, we aim to minimize the discrepancies among different domains via alleviating the effects of SiFs, and achieve improvements in generalization to unseen domains. To realize our goal, we propose a novel method called a Doubly Adversarial Suppression Network (DASN) that is trained to neglect the irrelevant factors and to focus more on faithful task-relevant factors. Our DASN consists of two types of adversarial learning schemes. In the first adversarial learning scheme, multiple SiFs are suppressed by deploying multiple discrimination heads that are trained against an encoder. In the second adversarial learning scheme, each of the discrimination heads is also adversarially trained to suppress a spoof factor, and the group of the secondary spoof classifier and the encoder aims to intensify the spoof factor by overcoming the suppression. We evaluate the proposed method on four public benchmark datasets, and achieve remarkable evaluation results in generalizing to unseen domains. The results demonstrate the effectiveness of the proposed method.
topic Presentation attack
domain generalization
adversarial learning
url https://ieeexplore.ieee.org/document/9423958/
work_keys_str_mv AT taewookkim suppressingspoofirrelevantfactorsfordomainagnosticfaceantispoofing
AT yonghyunkim suppressingspoofirrelevantfactorsfordomainagnosticfaceantispoofing
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