Heterogeneous Face Recognition (HFR) refers to matching face images captured in different domains, such as thermal to visible images (VIS), sketches to visible images, near-infrared to visible, and so on. This is particularly useful in matching visible spectrum images to images captured from other modalities. Though highly useful, HFR is challenging because of the domain gap between the source and target domain. Often, large-scale paired heterogeneous face image datasets are absent, preventing training models specifically for the heterogeneous task. In this work, we propose a surprisingly simple, yet, very effective method for matching face images across different sensing modalities. The core idea of the proposed approach is to add a novel neural network block called Prepended Domain Transformer (PDT) in front of a pre-trained face recognition (FR) model to address the domain gap. Retraining this new block with few paired samples in a contrastive learning setup was enough to achieve state-of-the-art performance in many HFR benchmarks. The PDT blocks can be retrained for several source-target combinations using the proposed general framework. The proposed approach is architecture agnostic, meaning they can be added to any pre-trained FR models. Further, the approach is modular and the new block can be trained with a minimal set of paired samples, making it much easier for practical deployment. The source code and protocols will be made available publicly.
翻译:异质面部识别(HFR) 是指匹配在不同领域拍摄的面部图像,如热到可见图像(VIS) 、 素描到可见图像、 近红红到可见等等。 这在将可见频谱图像与从其他模式拍摄的图像相匹配方面特别有用。 虽然非常有用, HFR 具有挑战性, 因为源与目标域之间存在域间差距。 通常, 大规模配对的多元面部图像数据集不存在, 从而防止了专门为混杂任务设置的培训模型。 在这项工作中, 我们提出了一种令人惊讶的简单而非常有效的方法, 以匹配不同感测模式的面部图像。 拟议方法的核心思想是添加一个新的神经网络块, 名为Prepfend Domain 变形器(PDT ), 在事先培训的面部位识别模型( FFR) 模型之前添加了一个新的神经网络块块块块块块块块, 并且可以更精确地设置一个模块式的模型。, 最易被训练的模型将具有最起码的含义。