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Image denoising via sparse representations over Sequential Generalization of K-means (SGK)

机译:通过K均值的顺序泛化(SGK)上的稀疏表示对图像进行去噪

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We have recently proposed a Sequential Generalization of K-means (SGK) to train dictionary for sparse representation. SGK's training performance is as effective as the standard dictionary training algorithm K-SVD, alongside it has a simpler implementation to its advantage. In this piece of work, through the problem of image denoising, we are making a fair comparison between the usability of SGK and K-SVD. The obtained results suggest that we can successfully replace K-SVD with SGK, due to its quicker execution and comparable outcomes. Similarly, it is possible to extend the use of SGK to other applications of sparse representation.
机译:最近,我们提出了一种K均值的顺序泛化(SGK)来训练稀疏表示的字典。 SGK的训练性能与标准字典训练算法K-SVD一样有效,并且具有更简单的实现方法。在本文中,通过图像去噪问题,我们正在对SGK和K-SVD的可用性进行公平的比较。获得的结果表明,由于其执行速度更快且结果可比,因此我们可以成功地用SGK替换K-SVD。同样,可以将SGK的使用扩展到稀疏表示的其他应用程序。

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