Agarwal Akshay, Singh Richa, Vatsa Mayank, Noore Afzel
Department of Computer Science and Engineering, Indraprastha Institute of Information Technology Delhi (IIIT-Delhi), New Delhi, India.
Department of Computer Science and Engineering, Indian Institute of Technology (IIT) Jodhpur, Jodhpur, India.
Front Big Data. 2022 Jul 22;5:836749. doi: 10.3389/fdata.2022.836749. eCollection 2022.
Presentation attack detection (PAD) algorithms have become an integral requirement for the secure usage of face recognition systems. As face recognition algorithms and applications increase from constrained to unconstrained environments and in multispectral scenarios, presentation attack detection algorithms must also increase their scope and effectiveness. It is important to realize that the PAD algorithms are not only effective for one environment or condition but rather be generalizable to a multitude of variabilities that are presented to a face recognition algorithm. With this motivation, as the first contribution, the article presents a unified PAD algorithm for different kinds of attacks such as printed photos, a replay of video, 3D masks, silicone masks, and wax faces. The proposed algorithm utilizes a combination of wavelet decomposed raw input images from sensor and face region data to detect whether the input image is bonafide or attacked. The second contribution of the article is the collection of a large presentation attack database in the NIR spectrum, containing images from individuals of two ethnicities. The database contains 500 print attack videos which comprise approximately 1,00,000 frames collectively in the NIR spectrum. Extensive evaluation of the algorithm on NIR images as well as visible spectrum images obtained from existing benchmark databases shows that the proposed algorithm yields state-of-the-art results and surpassed several complex and state-of-the-art algorithms. For instance, on benchmark datasets, namely CASIA-FASD, Replay-Attack, and MSU-MFSD, the proposed algorithm achieves a maximum error of 0.92% which is significantly lower than state-of-the-art attack detection algorithms.
呈现攻击检测(PAD)算法已成为安全使用人脸识别系统的一项不可或缺的要求。随着人脸识别算法和应用从受限环境扩展到不受限环境以及多光谱场景,呈现攻击检测算法也必须扩大其范围并提高有效性。必须认识到,PAD算法不仅在一种环境或条件下有效,而且应能推广到人脸识别算法所面临的多种变化情况。出于这一动机,作为第一项贡献,本文针对诸如打印照片、视频重放、3D面具、硅胶面具和蜡像脸等不同类型的攻击提出了一种统一的PAD算法。所提出的算法利用传感器的小波分解原始输入图像和面部区域数据的组合来检测输入图像是真实的还是受到攻击的。本文的第二项贡献是收集了一个近红外光谱范围内的大型呈现攻击数据库,其中包含来自两个不同种族个体的图像。该数据库包含500个打印攻击视频,在近红外光谱范围内总共约有100,000帧。对该算法在近红外图像以及从现有基准数据库获得的可见光图像上进行的广泛评估表明,所提出的算法产生了领先的结果,并超过了几种复杂的和领先的算法。例如,在基准数据集CASIA-FASD、Replay-Attack和MSU-MFSD上,所提出的算法实现的最大误差为0.92%,明显低于领先的攻击检测算法。