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Fast Image Super-Resolution Based on In-Place Example Regression

机译:基于就地示例回归的快速图像超分辨率

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We propose a fast regression model for practical single image super-resolution based on in-place examples, by leveraging two fundamental super-resolution approaches- learning from an external database and learning from self-examples. Our in-place self-similarity refines the recently proposed local self-similarity by proving that a patch in the upper scale image have good matches around its origin location in the lower scale image. Based on the in-place examples, a first-order approximation of the nonlinear mapping function from low-to high-resolution image patches is learned. Extensive experiments on benchmark and real-world images demonstrate that our algorithm can produce natural-looking results with sharp edges and preserved fine details, while the current state-of-the-art algorithms are prone to visual artifacts. Furthermore, our model can easily extend to deal with noise by combining the regression results on multiple in-place examples for robust estimation. The algorithm runs fast and is particularly useful for practical applications, where the input images typically contain diverse textures and they are potentially contaminated by noise or compression artifacts.
机译:通过利用两种基本的超分辨率方法,即从外部数据库中学习和从自我示例中学习,我们基于原位示例为实际的单幅图像超分辨率提出了一种快速回归模型。我们的就地自相似性通过证明高比例图像中的色块在低比例图像中的原始位置周围具有良好的匹配性,改进了最近提出的局部自相似性。根据就地示例,了解从低分辨率图像斑块到高分辨率图像斑块的非线性映射函数的一阶逼近。在基准和真实世界图像上进行的大量实验表明,我们的算法可以产生具有锐利边缘和保留精细细节的自然外观结果,而当前最先进的算法则容易产生视觉伪像。此外,我们的模型可以通过将回归结果与多个就地示例进行组合以进行稳健估计,从而轻松扩展以处理噪声。该算法运行速度很快,对于实际应用特别有用,在实际应用中,输入图像通常包含各种纹理,并且可能被噪声或压缩伪影污染。

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