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A Novel Online Dictionary Learning Method from Compressed Signals

机译:一种新的基于压缩信号的在线词典学习方法

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Dictionary learning algorithm facilitates a sparse representation of a given set of training signals, which has significant impact on signal reconstruction error in compressive sensing. To reduce the recovery error caused by environmental noise, in this paper, a novel structured dictionary learning method for sparse signal representation is presented. The training signals are collected from compressive data gathering methods. And the self-coherence of the dictionary is punished. In comparison with the DCT basis and the K-SVD method, experimental results verify that the proposed dictionary is more effective to alleviate the recovery error caused by environmental noise.
机译:字典学习算法促进了给定训练信号集的稀疏表示,这对压缩感测中的信号重建误差有重大影响。为了减少环境噪声引起的恢复误差,本文提出了一种新的结构化字典学习方法,用于稀疏信号表示。训练信号是从压缩数据收集方法中收集的。并且字典的自相干性受到了惩罚。与DCT法和K-SVD法相比,实验结果证明了该字典在减轻环境噪声引起的恢复误差方面更为有效。

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