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Single-image super-resolution using online kernel adaptive filters

机译:使用在线内核自适应滤波器的单图像超分辨率

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摘要

The online kernel adaptive filters are non-linear filters which provide impulse response and are more efficient compared to other kernel algorithms. The performance of kernel adaptive filters depends on dictionary size. Here the single-image super-resolution using online kernel adaptive filters is a learning-based method. The algorithm generates a sparser solution for obtaining high-resolution image from a low-resolution image. It finds out a dictionary with most significant set of basis vectors using the spatial similarity among the dictionaries created from the low-resolution and high-resolution image patches in the training set. The dictionary is utilised to generate the high-resolution image. The algorithm is analysed on three different kernel adaptive filters, extended kernel recursive least squares, kernel recursive least squares tracker and naive online regularised risk minimisation algorithm. The performance of the super-resolution method is evaluated on a large number of images and is compared with the state-of-the art non-linear solutions to the super-resolution. The results show a better progress in peak signal-to-noise ratio up to 1.2 dB.
机译:在线内核自适应滤波器是非线性滤波器,可提供脉冲响应,并且与其他内核算法相比,效率更高。内核自适应滤波器的性能取决于字典大小。在这里,使用在线内核自适应滤波器的单图像超分辨率是一种基于学习的方法。该算法生成用于从低分辨率图像获得高分辨率图像的稀疏解决方案。它使用从训练集中的低分辨率和高分辨率图像块创建的字典之间的空间相似性,找到具有最重要基向量集的字典。该词典用于生成高分辨率图像。在三种不同的内核自适应滤波器,扩展的内核递归最小二乘,内核递归最小二乘跟踪器和朴素的在线正则化风险最小化算法上对该算法进行了分析。在大量图像上评估超分辨率方法的性能,并将其与最新的超分辨率非线性解决方案进行比较。结果表明,在高达1.2 dB的峰值信噪比方面有更好的进展。

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