Dipartimento di Informatica, Università degli Studi di Milano, via Celoria 18, 20133 Milano, Italy.
Department of Mathematics, Khalifa University of Science and Technology, Al Saada Street, PO Box 127788, Abu Dhabi, UAE.
Sensors (Basel). 2019 Jan 3;19(1):146. doi: 10.3390/s19010146.
Face recognition using a single reference image per subject is challenging, above all when referring to a large gallery of subjects. Furthermore, the problem hardness seriously increases when the images are acquired in unconstrained conditions. In this paper we address the challenging Single Sample Per Person (SSPP) problem considering large datasets of images acquired in the wild, thus possibly featuring illumination, pose, face expression, partial occlusions, and low-resolution hurdles. The proposed technique alternates a sparse dictionary learning technique based on the method of optimal direction and the iterative ℓ 0 -norm minimization algorithm called -LiMapS. It works on robust deep-learned features, provided that the image variability is extended by standard augmentation techniques. Experiments show the effectiveness of our method against the hardness introduced above: first, we report extensive experiments on the unconstrained LFW dataset when referring to large galleries up to 1680 subjects; second, we present experiments on very low-resolution test images up to 8 × 8 pixels; third, tests on the AR dataset are analyzed against specific disguises such as partial occlusions, facial expressions, and illumination problems. In all the three scenarios our method outperforms the state-of-the-art approaches adopting similar configurations.
使用每个主体的单个参考图像进行人脸识别具有挑战性,尤其是在涉及到大量主体的图库时。此外,当图像在不受约束的条件下获取时,问题的难度会严重增加。在本文中,我们考虑了在野外获取的大型图像数据集,从而可能具有照明、姿势、面部表情、部分遮挡和低分辨率障碍,解决了具有挑战性的单人单样本(SSPP)问题。所提出的技术交替使用基于最优方向法的稀疏字典学习技术和称为 -LiMapS 的迭代 l0 范数最小化算法。它适用于稳健的深度学习特征,只要通过标准增强技术扩展图像的可变性。实验表明,我们的方法针对上述困难具有有效性:首先,我们在不受约束的 LFW 数据集上报告了广泛的实验,涉及多达 1680 个主体的大型图库;其次,我们在低分辨率测试图像上进行了实验,分辨率低至 8x8 像素;第三,对 AR 数据集的测试针对特定的伪装,例如部分遮挡、面部表情和照明问题。在所有三种情况下,我们的方法都优于采用类似配置的最先进方法。