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Bi-FPNFAS:基于傅里叶频谱利用双向特征金字塔网络进行像素级人脸反欺骗。

Bi-FPNFAS: Bi-Directional Feature Pyramid Network for Pixel-Wise Face Anti-Spoofing by Leveraging Fourier Spectra.

机构信息

Gaze Pte. Ltd., Singapore 068914, Singapore.

Department of Electrical and Computer Engineering, North South University, Dhaka 1229, Bangladesh.

出版信息

Sensors (Basel). 2021 Apr 15;21(8):2799. doi: 10.3390/s21082799.

Abstract

The emergence of biometric-based authentication using modern sensors on electronic devices has led to an escalated use of face recognition technologies. While these technologies may seem intriguing, they are accompanied by numerous implicit drawbacks. In this paper, we look into the problem of face anti-spoofing (FAS) on a frame level in an attempt to ameliorate the risks of face-spoofed attacks in biometric authentication processes. We employed a bi-directional feature pyramid network (BiFPN) that is used for convolutional multi-scaled feature extraction on the EfficientDet detection architecture, which is novel to the task of FAS. We further use these convolutional multi-scaled features in order to perform deep pixel-wise supervision. For all of our experiments, we performed evaluations across all major datasets and attained competitive results for the majority of the cases. Additionally, we showed that introducing an auxiliary self-supervision branch tasked with reconstructing the inputs in the frequency domain demonstrates an average classification error rate (ACER) of 2.92% on Protocol IV of the OULU-NPU dataset, which is significantly better than the currently available published works on pixel-wise face anti-spoofing. Moreover, following the procedures of prior works, we performed inter-dataset testing, which further consolidated the generalizability of the proposed models, as they showed optimum results across various sensors without any fine-tuning procedures.

摘要

利用电子设备上的现代传感器进行生物识别认证的出现,导致人脸识别技术的使用急剧增加。虽然这些技术看起来很有趣,但它们也伴随着许多隐含的缺点。在本文中,我们研究了在帧级别的人脸防欺骗(FAS)问题,试图改善生物认证过程中人脸欺骗攻击的风险。我们使用了一种双向特征金字塔网络(BiFPN),该网络用于在 EfficientDet 检测架构上进行卷积多尺度特征提取,这对于 FAS 任务来说是新颖的。我们进一步利用这些卷积多尺度特征进行深度像素级监督。在所有实验中,我们在所有主要数据集上进行了评估,并在大多数情况下获得了有竞争力的结果。此外,我们表明,引入一个辅助的自监督分支,其任务是在频域中重建输入,可以将 OULU-NPU 数据集的协议 IV 上的平均分类错误率(ACER)降低到 2.92%,这明显优于目前在像素级人脸防欺骗方面的已有工作。此外,按照先前工作的程序进行了跨数据集测试,这进一步巩固了所提出模型的泛化能力,因为它们在无需任何微调过程的情况下,在各种传感器上都显示出了最佳的结果。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1c0f/8071535/78dcb38120e5/sensors-21-02799-g0A1.jpg

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