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SSR2: Sparse signal recovery for single-image super-resolution on faces with extreme low resolutions

机译:SSR2:具有极低分辨率的单图像超分辨率的稀疏信号恢复

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摘要

Automatic face recognition in the wild still suffers from low-quality, low resolution, noisy, and occluded input images that can severely impact identification accuracy. In this paper, we present a novel technique to enhance the quality of such extreme low-resolution face images beyond the current state of the art. We model the correlation between high and low resolution faces in a multi-resolution pyramid and show that we can recover the original structure of an un-seen extreme low-resolution face image. By exploiting domain knowledge of the structure of the input signal and using sparse recovery optimization algorithms, we can recover a consistent sparse representation of the extreme low-resolution signal. The proposed super-resolution method is robust to noise and face alignment, and can handle extreme low-resolution faces up to 16x magnification factor with just 7 pixels between the eyes. Moreover, the formulation of the proposed algorithm allows for simultaneous occlusion removal capability, a desirable property that other super-resolution algorithms do not possess, to the best of our knowledge. Most importantly, we show that our method generalizes on real-world low-quality surveillance images, showing the potentially big impact this can have in a real-world scenario. Keywords: Sparse signal recovery (SSR) Single-image super-resolution (SSR) Extreme low resolution (C) 2019 Elsevier Ltd. All rights reserved.
机译:野外的自动面部识别仍然存在低质量,低分辨率,嘈杂和遮挡的输入图像,可以严重影响识别准确性。在本文中,我们提出了一种新颖的技术来提高超出本领域当前状态的这种极端低分辨率面部图像的质量。我们在多分辨率金字塔中模拟高低分辨率面之间的相关性,并显示我们可以恢复未见的极端低分辨率面部图像的原始结构。通过利用输入信号结构和使用稀疏恢复优化算法的域,我们可以恢复极端低分辨率信号的一致稀疏表示。所提出的超分辨率方法是对噪声和面向对准的稳健性,可以处理最高可达16倍放大系数的极端低分辨率,在眼睛之间只有7个像素。此外,所提出的算法的配方允许同时闭塞去除能力,这是我们最佳知识的其他超分辨率算法不具有的理想特性。最重要的是,我们表明我们的方法推广了现实世界的低质量监视图像,这表明这可能在真实世界中的情景中可能具有巨大影响。关键词:稀疏信号恢复(SSR)单图像超分辨率(SSR)极端低分辨率(C)2019 Elsevier Ltd.保留所有权利。

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