Multivariate locally stationary 2D wavelet processes with application to colour texture analysis

被引:0
作者
Sarah L. Taylor
Idris A. Eckley
Matthew A. Nunes
机构
[1] Lancaster University,Department of Mathematics and Statistics, Fylde College
来源
Statistics and Computing | 2017年 / 27卷
关键词
Random field; Local spectrum; Local coherence; Colour texture; Wavelets;
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学科分类号
摘要
In this article we propose a novel framework for the modelling of non-stationary multivariate lattice processes. Our approach extends the locally stationary wavelet paradigm into the multivariate two-dimensional setting. As such the framework we develop permits the estimation of a spatially localised spectrum within a channel of interest and, more importantly, a localised cross-covariance which describes the localised coherence between channels. Associated estimation theory is also established which demonstrates that this multivariate spatial framework is properly defined and has suitable convergence properties. We also demonstrate how this model-based approach can be successfully used to classify a range of colour textures provided by an industrial collaborator, yielding superior results when compared against current state-of-the-art statistical image processing methods.
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页码:1129 / 1143
页数:14
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