Wavelet variance analysis for random fields on a regular lattice

Debashis Mondal, Donald B. Percival

    Research output: Contribution to journalArticlepeer-review

    18 Scopus citations

    Abstract

    There has been considerable recent interest in using wavelets to analyze time series and images that can be regarded as realizations of certain 1-D and 2-D stochastic processes on a regular lattice. Wavelets give rise to the concept of the wavelet variance (or wavelet power spectrum), which decomposes the variance of a stochastic process on a scale-by-scale basis. The wavelet variance has been applied to a variety of time series, and a statistical theory for estimators of this variance has been developed. While there have been applications of the wavelet variance in the 2-D context (in particular, in works by Unser in 1995 on wavelet-based texture analysis for images and by Lark and Webster in 2004 on analysis of soil properties), a formal statistical theory for such analysis has been lacking. In this paper, we develop the statistical theory by generalizing and extending some of the approaches developed for time series, thus leading to a large-sample theory for estimators of 2-D wavelet variances. We apply our theory to simulated data from Gaussian random fields with exponential covariances and from fractional Brownian surfaces. We demonstrate that the wavelet variance is potentially useful for texture discrimination. We also use our methodology to analyze images of four types of clouds observed over the southeast Pacific Ocean.

    Original languageEnglish
    Article number5989864
    Pages (from-to)537-549
    Number of pages13
    JournalIEEE Transactions on Image Processing
    Volume21
    Issue number2
    DOIs
    StatePublished - Feb 2012

    Keywords

    • Analysis of variance
    • Daubechies filters
    • fractional Brownian surface (FBS)
    • intrinsically stationary random fields
    • pockets of open cells (POCs)
    • semivariogram
    • textures

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