LAMP-HQ: A Large-Scale Multi-pose High-Quality Database and Benchmark for NIR-VIS Face Recognition

作者:Aijing Yu, Haoxue Wu, Huaibo Huang, Zhen Lei, Ran He

摘要

Near-infrared-visible (NIR-VIS) heterogeneous face recognition matches NIR to corresponding VIS face images. However, due to the sensing gap, NIR images often lose some identity information so that the NIR-VIS recognition issue is more difficult than conventional VIS face recognition. Recently, NIR-VIS heterogeneous face recognition has attracted considerable attention in the computer vision community because of its convenience and adaptability in practical applications. Various deep learning-based methods have been proposed and substantially increased the recognition performance, but the lack of NIR-VIS training samples leads to the difficulty of the model training process. In this paper, we propose a new \(\mathbf{L} {} \mathbf{a} \)rge-Scale \(\mathbf{M} \)ulti-\(\mathbf{P} \)ose \(\mathbf{H} \)igh-\(\mathbf{Q} \)uality NIR-VIS database ‘\(\mathbf{LAMP}-HQ \)’ containing 56,788 NIR and 16,828 VIS images of 573 subjects with large diversities in pose, illumination, attribute, scene and accessory. We furnish a benchmark along with the protocol for NIR-VIS face recognition via generation on LAMP-HQ, including Pixel2-Pixel, CycleGAN, ADFL, PCFH, and PACH. Furthermore, we propose a novel exemplar-based variational spectral attention network to produce high-fidelity VIS images from NIR data. A spectral conditional attention module is introduced to reduce the domain gap between NIR and VIS data and then improve the performance of NIR-VIS heterogeneous face recognition on various databases including the LAMP-HQ.

论文关键词:Heterogeneous face recognition, Near infrared-visible matching, Database, Variational spectral attention, Spectral conditional attention

论文评审过程:

论文官网地址:https://doi.org/10.1007/s11263-021-01432-4