A Novel Online Dictionary Learning Method from Compressed Signals

2016 8th International Conference on Intelligent Human-Machine Systems and Cybernetics (IHMSC)(2016)

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摘要
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.
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关键词
wireless sensor networks,sparse representation,compressive sensing,online dictionary learning
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