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Multilevel dictionary learning for sparse representation of images

机译:用于字典稀疏表示的多级字典学习

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Adaptive data-driven dictionaries for sparse approximations provide superior performance compared to predefined dictionaries in applications involving representation and classification of data. In this paper, we propose a novel algorithm for learning global dictionaries particularly suited to the sparse representation of natural images. The proposed algorithm uses a hierarchical energy based learning approach to learn a multilevel dictionary. The atoms that contribute the most energy to the representation are learned in the first level and those that contribute lesser energies are learned in the subsequent levels. The learned multilevel dictionary is compared to a dictionary learned using the K-SVD algorithm. Reconstruction results using a small number of non-zero coefficients demonstrate the advantage of exploiting energy hierarchy using multilevel dictionaries, pointing to potential applications in low bit-rate image compression. Superior performance in compressed sensing using optimized sensing matrices with small number of measurements is also demonstrated.
机译:与涉及数据表示和分类的应用程序中的预定义词典相比,用于稀疏近似的自适应数据驱动词典提供了卓越的性能。在本文中,我们提出了一种用于学习全局词典的新颖算法,该算法特别适合于自然图像的稀疏表示。所提出的算法使用基于分层能量的学习方法来学习多级字典。在第一级中学习为表示贡献最大能量的原子,在随后的级中学习贡献较小能量的原子。将学习到的多级字典与使用K-SVD算法学习到的字典进行比较。使用少量非零系数的重建结果证明了利用多级字典利用能量层次结构的优势,指出了在低比特率图像压缩中的潜在应用。还展示了使用优化的感测矩阵进行少量测量后在压缩感测中的卓越性能。

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