CVSep 10, 2019

Cross-Spectral Face Hallucination via Disentangling Independent Factors

arXiv:1909.04365v261 citations
Originality Incremental advance
AI Analysis

This work solves the problem of cross-spectral face hallucination for biometric recognition, with incremental improvements in alignment and realism.

The paper tackled the cross-sensor gap in Heterogeneous Face Recognition by addressing misalignment from facial geometric variations, proposing a two-stage approach that disentangles independent factors to generate visible images from near-infrared inputs, achieving state-of-the-art performance on three datasets.

The cross-sensor gap is one of the challenges that have aroused much research interests in Heterogeneous Face Recognition (HFR). Although recent methods have attempted to fill the gap with deep generative networks, most of them suffer from the inevitable misalignment between different face modalities. Instead of imaging sensors, the misalignment primarily results from facial geometric variations that are independent of the spectrum. Rather than building a monolithic but complex structure, this paper proposes a Pose Aligned Cross-spectral Hallucination (PACH) approach to disentangle the independent factors and deal with them in individual stages. In the first stage, an Unsupervised Face Alignment (UFA) module is designed to align the facial shapes of the near-infrared (NIR) images with those of the visible (VIS) images in a generative way, where UV maps are effectively utilized as the shape guidance. Thus the task of the second stage becomes spectrum translation with aligned paired data. We develop a Texture Prior Synthesis (TPS) module to achieve complexion control and consequently generate more realistic VIS images than existing methods. Experiments on three challenging NIR-VIS datasets verify the effectiveness of our approach in producing visually appealing images and achieving state-of-the-art performance in HFR.

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