In this paper, we aim to address the large domain gap between high-resolution face images, e.g., from professional portrait photography, and low-quality surveillance images, e.g., from security cameras. Establishing an identity match between disparate sources like this is a classical surveillance face identification scenario, which continues to be a challenging problem for modern face recognition techniques. To that end, we propose a method that combines face super-resolution, resolution matching, and multi-scale template accumulation to reliably recognize faces from long-range surveillance footage, including from low quality sources. The proposed approach does not require training or fine-tuning on the target dataset of real surveillance images. Extensive experiments show that our proposed method is able to outperform even existing methods fine-tuned to the SCFace dataset.
翻译:在本文中,我们力求解决高分辨率脸部图像(例如专业肖像摄影)和低质量监视图像(例如安全摄像头)之间的巨大领域差距。在这种不同的来源之间建立身份匹配是一种典型的监视面部识别假想,对于现代面部识别技术来说,这仍然是一个具有挑战性的问题。为此,我们提出一种方法,将面部超分辨率、分辨率匹配和多尺度模板积累结合起来,以便可靠地识别长距离监视镜头(包括低质量来源)的面部。拟议方法不需要对真实监视图像的目标数据集进行培训或微调。广泛的实验表明,我们拟议的方法能够超越甚至对现有SSCFace数据集进行微调的方法。