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MULTISCALE SPARSE IMAGE REPRESENTATION WITH LEARNED DICTIONARIES

机译:多尺度稀疏图像表示与学习词典

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This paper introduces a new framework for learning multiscale sparse representations of natural images with overcomplete dictionaries. Our work extends the K-SVD algorithm [1], which learns sparse single-scale dictionaries for natural images. Recent work has shown that the K-SVD can lead to state-of-the-art image restoration results [2, 3]. We show that these are further improved with a multi-scale approach, based on a Quadtree decomposition. Our framework provides an alternative to multiscale pre-defined dictionaries such as wavelets, curvelets, and contourlets, with dictionaries optimized for the data and application instead of pre-modelled ones.
机译:本文介绍了一种新的框架,用于学习多尺度的自然图像的稀疏表示与过度顺序词典。我们的工作扩展了K-SVD算法[1],从而了解自然图像的稀疏单尺度词典。最近的工作表明,K-SVD可以导致最先进的图像恢复结果[2,3]。我们表明,基于四叉细分解,这些方法进一步提高了多种方法。我们的框架提供了多尺度预定定义词典的替代方案,例如小波,曲线和轮廓,具有用于数据和应用程序而不是预先建模的词典。

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