Optimal compression of vibration data with lifting wavelet transform and context-based arithmetic coding.

European Signal Processing Conference(2017)

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摘要
This paper proposes an adaptive vibration signal compression scheme composed of a lifting discrete wavelet transform (LDWT) with set-partitioning embedded blocks (SPECK) that efficiently sorts the wavelet coefficients by significance. The output of the SPECK module is input to an optimized context-based arithmetic coder that generates the compressed bitstream. The algorithm is deployed as part of a reliable and effective health monitoring technology for machines and civil constructions (e.g. power generation system). This application area relies on the collection of large quantities of high quality vibration sensor data that needs to be compressed before storing and transmission. Experimental results indicate that the proposed method outperforms state-of-the-art coders, while retaining the characteristics in the compressed vibration signals to ensure accurate event analysis. For the same quality level, up to 59.41% bitrate reduction is achieved by the proposed method compared to JPEG2000.
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关键词
optimal compression,adaptive vibration signal compression scheme,set-partitioning embedded blocks,wavelet coefficients,health monitoring technology,lifting discrete wavelet transform,optimized context-based arithmetic coding,machines constructions,compressed vibration signals,high quality vibration sensor data,power generation system,civil constructions,compressed bitstream,SPECK module
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