Generic wavelet-based image decomposition and reconstruction framework for multi-modal data analysis in smart camera applications

Effective acquisition, analysis and reconstruction of multi-modal data such as colour and multi-/hyper-spectral imagery is crucial in smart camera applications, where wavelet-based coding and compression of images are highly demanded. Many existing discrete wavelet filtering banks have fixed coeffic...

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Vydáno v:IET computer vision Ročník 14; číslo 7; s. 471 - 479
Hlavní autoři: Yan, Yijun, Liu, Yiguang, Yang, Mingqiang, Zhao, Huimin, Chai, Yanmei, Ren, Jinchang
Médium: Journal Article
Jazyk:angličtina
Vydáno: The Institution of Engineering and Technology 01.10.2020
Wiley
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ISSN:1751-9632, 1751-9640, 1751-9640
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Shrnutí:Effective acquisition, analysis and reconstruction of multi-modal data such as colour and multi-/hyper-spectral imagery is crucial in smart camera applications, where wavelet-based coding and compression of images are highly demanded. Many existing discrete wavelet filtering banks have fixed coefficients hence their performance is highly dependent on the signal/image being processed. To tackle this problem, a unified framework is proposed in this study, which can produce a series of discrete wavelet filtering banks, where many existing discrete wavelet filtering banks become special cases of the framework. For each generated filtering bank, it consists of two decomposition filters and two reconstruction filters through an optimisation process. The efficacy of the filtering banks produced by the framework has been validated in two case studies, including colour image decomposition and reconstruction, and hyperspectral image classification. Comprehensive experiments have demonstrated the superior performance of the proposed framework, which will benefit the efficacy of smart camera and camera network applications.
ISSN:1751-9632
1751-9640
1751-9640
DOI:10.1049/iet-cvi.2019.0780