FSErasing: Improving Face Recognition with Data Augmentation Using Face Parsing

IF 1.8 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Hiroya Kawai, Koichi Ito, Hwann-Tzong Chen, Takafumi Aoki
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引用次数: 0

Abstract

We propose original semantic labels for detailed face parsing to improve the accuracy of face recognition by focusing on parts in a face. The part labels used in conventional face parsing are defined based on biological features, and thus, one label is given to a large region, such as skin. Our semantic labels are defined by separating parts with large areas based on the structure of the face and considering the left and right sides for all parts to consider head pose changes, occlusion, and other factors. By utilizing the capability of assigning detailed part labels to face images, we propose a novel data augmentation method based on detailed face parsing called Face Semantic Erasing (FSErasing) to improve the performance of face recognition. FSErasing is to randomly mask a part of the face image based on the detailed part labels, and therefore, we can apply erasing-type data augmentation to the face image that considers the characteristics of the face. Through experiments using public face image datasets, we demonstrate that FSErasing is effective for improving the performance of face recognition and face attribute estimation. In face recognition, adding FSErasing in training ResNet-34 with Softmax using CelebA improves the average accuracy by 0.354 points and the average equal error rate (EER) by 0.312 points, and with ArcFace, the average accuracy and EER improve by 0.752 and 0.802 points, respectively. ResNet-50 with Softmax using CASIA-WebFace improves the average accuracy by 0.442 points and the average EER by 0.452 points, and with ArcFace, the average accuracy and EER improve by 0.228 points and 0.500 points, respectively. In face attribute estimation, adding FSErasing as a data augmentation method in training with CelebA improves the estimation accuracy by 0.54 points. We also apply our detailed face parsing model to visualize face recognition models and demonstrate its higher explainability than general visualization methods.

Abstract Image

FSErasing:利用人脸解析进行数据扩充,提高人脸识别能力
我们提出了用于详细人脸解析的原创语义标签,通过关注人脸的各个部分来提高人脸识别的准确性。传统的人脸解析中使用的部位标签是根据生物特征定义的,因此,一个大的区域(如皮肤)会被赋予一个标签。而我们的语义标签是根据人脸的结构将面积较大的部分分开,并考虑到头部姿势变化、遮挡等因素,对所有部分的左右两侧进行定义。利用为人脸图像分配详细部分标签的能力,我们提出了一种基于详细人脸解析的新型数据增强方法--人脸语义擦除(FSErasing),以提高人脸识别性能。FSErasing 是根据详细的部分标签随机屏蔽人脸图像的一部分,因此我们可以对人脸图像进行考虑人脸特征的擦除式数据增强。通过使用公共人脸图像数据集进行实验,我们证明了 FSErasing 能够有效提高人脸识别和人脸属性估计的性能。在人脸识别方面,在使用 CelebA 的 Softmax ResNet-34 的训练中加入 FSErasing,平均准确率提高了 0.354 点,平均等错误率(EER)提高了 0.312 点;在使用 ArcFace 的训练中加入 FSErasing,平均准确率和等错误率分别提高了 0.752 点和 0.802 点。带有 Softmax 的 ResNet-50 使用 CASIA-WebFace 时,平均准确率提高了 0.442 点,平均等误率提高了 0.452 点;使用 ArcFace 时,平均准确率和等误率分别提高了 0.228 点和 0.500 点。在人脸属性估计方面,在使用 CelebA 进行训练时添加 FSErasing 作为数据增强方法,估计准确率提高了 0.54 点。我们还将详细的人脸解析模型应用于人脸识别模型的可视化,并证明了其比一般可视化方法更高的可解释性。
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来源期刊
IET Biometrics
IET Biometrics COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
5.90
自引率
0.00%
发文量
46
审稿时长
33 weeks
期刊介绍: The field of biometric recognition - automated recognition of individuals based on their behavioural and biological characteristics - has now reached a level of maturity where viable practical applications are both possible and increasingly available. The biometrics field is characterised especially by its interdisciplinarity since, while focused primarily around a strong technological base, effective system design and implementation often requires a broad range of skills encompassing, for example, human factors, data security and database technologies, psychological and physiological awareness, and so on. Also, the technology focus itself embraces diversity, since the engineering of effective biometric systems requires integration of image analysis, pattern recognition, sensor technology, database engineering, security design and many other strands of understanding. The scope of the journal is intentionally relatively wide. While focusing on core technological issues, it is recognised that these may be inherently diverse and in many cases may cross traditional disciplinary boundaries. The scope of the journal will therefore include any topics where it can be shown that a paper can increase our understanding of biometric systems, signal future developments and applications for biometrics, or promote greater practical uptake for relevant technologies: Development and enhancement of individual biometric modalities including the established and traditional modalities (e.g. face, fingerprint, iris, signature and handwriting recognition) and also newer or emerging modalities (gait, ear-shape, neurological patterns, etc.) Multibiometrics, theoretical and practical issues, implementation of practical systems, multiclassifier and multimodal approaches Soft biometrics and information fusion for identification, verification and trait prediction Human factors and the human-computer interface issues for biometric systems, exception handling strategies Template construction and template management, ageing factors and their impact on biometric systems Usability and user-oriented design, psychological and physiological principles and system integration Sensors and sensor technologies for biometric processing Database technologies to support biometric systems Implementation of biometric systems, security engineering implications, smartcard and associated technologies in implementation, implementation platforms, system design and performance evaluation Trust and privacy issues, security of biometric systems and supporting technological solutions, biometric template protection Biometric cryptosystems, security and biometrics-linked encryption Links with forensic processing and cross-disciplinary commonalities Core underpinning technologies (e.g. image analysis, pattern recognition, computer vision, signal processing, etc.), where the specific relevance to biometric processing can be demonstrated Applications and application-led considerations Position papers on technology or on the industrial context of biometric system development Adoption and promotion of standards in biometrics, improving technology acceptance, deployment and interoperability, avoiding cross-cultural and cross-sector restrictions Relevant ethical and social issues
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