Magnitude-phase of the dual-tree quaternionic wavelet transform for multispectral satellite image denoising

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作者
Mohammed Kadiri
Mohamed Djebbouri
Philippe Carré
机构
[1] Djillali Liabes University,Laboratory of Telecommunications and Digital Signal Processing, Department of Electronics, Faculty of Technology
[2] University of Mascara,Department of Material Science, Faculty of Sciences and Technology
[3] Djillali Liabes University,Laboratory of Telecommunications and Digital Signal Processing, Department of Electronics, Faculty of Technology
[4] University of Poitiers,XLIM
[5] Futuroscope,SIC Laboratory, Department of Signal, Image, and Communications, XLIM Institute, CNRS UMR 6172, UFR Sciences
关键词
Multispectral satellite image; Quaternionic wavelet analysis; Magnitude thresholding; Phase regularization; Structural similarity measure;
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摘要
In this paper, we study the potential of the quaternionic wavelet transform for the analysis and processing of multispectral images with strong structural information. This new representation gives a very good division of the coefficients in terms of magnitude and three-phase angles and generalizes better the concept of analytic signal to image. Furthermore, it retains the property of shift invariant and directivity. We show an application of this transform in satellite image denoising. The proposed approach relies on the adaptation of thresholding procedures based on the dependency between magnitude quaternionic coefficients in local neighborhoods and phase regularization. In addition a non-marginal aspect of multispectral representation is introduced. Thanks to coherent analysis provided by the quaternionic wavelet transformation, the results obtained indicate the potential of this multispectral representation with magnitude thresholding and phase smoothing in noise reduction and edge preservation compared with classical wavelet thresholding methods that do not use phase or multiband information.
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