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Cross-resolution learning for Face Recognition

机译:面部识别的跨分辨率学习

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Convolutional Neural Network models have reached extremely high performance on the Face Recognition task. Mostly used datasets, such as VGGFace2, focus on gender, pose, and age variations, in the attempt of balancing them to empower models to better generalize to unseen data. Nevertheless, image resolution variability is not usually discussed, which may lead to a resizing of 256 pixels. While specific datasets for very low-resolution faces have been proposed, less attention has been paid on the task of cross-resolution matching. Hence, the discrimination power of a neural network might seriously degrade in such a scenario. Surveillance systems and forensic applications are particularly susceptible to this problem since, in these cases, it is common that a low-resolution query has to be matched against higher-resolution galleries. Although it is always possible to either increase the resolution of the query image or to reduce the size of the gallery (less frequently), to the best of our knowledge, extensive experimentation of cross-resolution matching was missing in the recent deep learning-based literature. In the context of low- and cross-resolution Face Recognition, the contribution of our work is fourfold: i) we proposed a training procedure to fine-tune a state-of-the-art model to empower it to extract resolution-robust deep features; ii) we conducted an extensive test campaign by using high-resolution datasets (IJB-B and IJB-C) and surveillance-camera-quality datasets (QMUL-SurvFace, TinyFace, and SCface) showing the effectiveness of our algorithm to train a resolution-robust model; iii) even though our main focus was the cross-resolution Face Recognition, by using our training algorithm we also improved upon state-of-the-art model performances considering low-resolution matches; iv) we showed that our approach could be more effective concerning preprocessing faces with super-resolution techniques.The python code of the proposed method will be available at https://github.com/fvmassoli/cross-resolution-face-recognition. (C) 2020 Elsevier B.V. All rights reserved.
机译:卷积神经网络模型对面部识别任务达到了极高的性能。主要使用数据集,例如Vggface2,专注于性别,姿势和年龄变化,试图平衡它们以使模型更好地推广到未完成的数据。然而,通常不讨论图像分辨率变异性,这可能导致调整256像素的大小。虽然已经提出了用于非常低分辨率面的特定数据集,但在跨分辨率匹配的任务上支付了不太关注。因此,神经网络的歧视力可能在这种情况下严重降低。监控系统和法医应用特别容易受到该问题的影响,因为在这些情况下,常常必须与更高分辨率的寓立库匹配低分辨率查询。虽然始终可以增加查询图像的分辨率,或者据我们所知,迄今为止,近期基于深度学习的跨分辨率匹配的广泛实验缺少了广泛的跨分辨率匹配的大量实验文学。在低和跨分辨率的人脸识别的背景下,我们的工作的贡献是四倍:i)我们提出了一种培训程序来微调最先进的模型,以赋予它提取决议强大的决议特征; ii)我们通过使用高分辨率数据集(IJB-B和IJB-C)和监视相机 - 质量数据集(QMUL-Survface,TinyFace和SCFace)进行了广泛的测试活动,显示了我们算法培训分辨率的有效性 - 罗偶模型; iii)即使我们的主要重点是横发面部识别,通过使用我们的培训算法,考虑到低分辨率匹配,我们还改善了最先进的模型性能; iv)我们认为,我们的方法可以更有效地了解具有超级分辨率技术的预处理面。所提出的方法的Python代码将在https://github.com/fvmassoli/cross-resolution-recognition中获得。 (c)2020 Elsevier B.v.保留所有权利。

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