论文标题

低分辨率面部识别

Multi Scale Identity-Preserving Image-to-Image Translation Network for Low-Resolution Face Recognition

论文作者

Khazaie, Vahid Reza, Bayat, Nicky, Mohsenzadeh, Yalda

论文摘要

最先进的深度神经网络模型已在受控的高分辨率面部图像上达到了几乎完美的面部识别精度。但是,当他们用非常低分辨率的面部图像测试时,它们的性能会大大退化。这在监视系统中尤其重要,在监视系统中,低分辨率探测图像将与高分辨率图库图像匹配。超分辨率技术旨在从低分辨率对应物中产生高分辨率的面部图像。尽管它们能够重建具有视觉吸引力的图像,但与身份相关的信息尚未保留。在这里,我们提出了一个具有身份的端到端图像到图像翻译的深神经网络,该网络能够将非常低分辨率的面孔与高分辨率同行相关,同时保留与身份相关的信息。我们通过训练一个非常深的卷积编码器网络来实现这一目标,并在相应层之间具有对称的收缩路径。该网络在多尺度的低分辨率条件下训练了重建和具有身份损失的结合。对我们提出的模型的广泛定量评估表明,它在自然和人工低分辨率的面部数据集甚至看不见的身份方面优于竞争超分辨率和低分辨率的面部识别方法。

State-of-the-art deep neural network models have reached near perfect face recognition accuracy rates on controlled high-resolution face images. However, their performance is drastically degraded when they are tested with very low-resolution face images. This is particularly critical in surveillance systems, where a low-resolution probe image is to be matched with high-resolution gallery images. super-resolution techniques aim at producing high-resolution face images from low-resolution counterparts. While they are capable of reconstructing images that are visually appealing, the identity-related information is not preserved. Here, we propose an identity-preserving end-to-end image-to-image translation deep neural network which is capable of super-resolving very low-resolution faces to their high-resolution counterparts while preserving identity-related information. We achieved this by training a very deep convolutional encoder-decoder network with a symmetric contracting path between corresponding layers. This network was trained with a combination of a reconstruction and an identity-preserving loss, on multi-scale low-resolution conditions. Extensive quantitative evaluations of our proposed model demonstrated that it outperforms competing super-resolution and low-resolution face recognition methods on natural and artificial low-resolution face data sets and even unseen identities.

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