We study the statistics of wavelet coefficients of non-Gaussian images, focusing mainly on the behaviour at coarse scales. We assume that an image can be whitened by a fractional Laplacian operator, which is consistent with an $ ∥ω∥ ^{ -\gamma } $ spectral decay. In other words, we model images as sparse and self-similar stochastic processes within the framework of generalised innovation models. We show that the wavelet coefficients at coarse scales are asymptotically Gaussian even if the prior model for fine scales is sparse. We further refine our analysis by deriving the theoretical evolution of the cumulants of wavelet coefficients across scales. Especially, the evolution of the kurtosis supplies a theoretical prediction for the Gaussian...
We develop a probability model for natural images, based on empirical observation of their statistic...
Abstract—We consider the reconstruction of multi-dimensional signals from noisy samples. The problem...
The focus of this thesis is to explore the structure present in the wavelet decomposition of natural...
This paper investigates the statistical characterization of multiscale wavelet coefficients corresp...
International audienceIn the modern world, systems are routinely monitored by multiple sensors, gene...
This paper investigates the statistical characterizationof mul-tiscale wavelet coefficients correspo...
International audienceWe study the asymptotic behavior of wavelet coefficients of random processes w...
AbstractWe study the asymptotic behavior of wavelet coefficients of random processes with long memor...
Abstract — We introduce a general distributional framework that results in a unifying description an...
We introduce a general distributional framework that results in a unifying description and character...
Vision can be considered a highly specialized data collection and analysis problem. We need to under...
The use of multi-scale decompositions has led to significant advances in representation, compression...
By using chaos expansion into multiple stochastic integrals, we make a wavelet analysis of two self-...
We introduce a general distributional framework that results in a unifying description and character...
We develop a probability model for natural images, based on empirical observation of their statisti...
We develop a probability model for natural images, based on empirical observation of their statistic...
Abstract—We consider the reconstruction of multi-dimensional signals from noisy samples. The problem...
The focus of this thesis is to explore the structure present in the wavelet decomposition of natural...
This paper investigates the statistical characterization of multiscale wavelet coefficients corresp...
International audienceIn the modern world, systems are routinely monitored by multiple sensors, gene...
This paper investigates the statistical characterizationof mul-tiscale wavelet coefficients correspo...
International audienceWe study the asymptotic behavior of wavelet coefficients of random processes w...
AbstractWe study the asymptotic behavior of wavelet coefficients of random processes with long memor...
Abstract — We introduce a general distributional framework that results in a unifying description an...
We introduce a general distributional framework that results in a unifying description and character...
Vision can be considered a highly specialized data collection and analysis problem. We need to under...
The use of multi-scale decompositions has led to significant advances in representation, compression...
By using chaos expansion into multiple stochastic integrals, we make a wavelet analysis of two self-...
We introduce a general distributional framework that results in a unifying description and character...
We develop a probability model for natural images, based on empirical observation of their statisti...
We develop a probability model for natural images, based on empirical observation of their statistic...
Abstract—We consider the reconstruction of multi-dimensional signals from noisy samples. The problem...
The focus of this thesis is to explore the structure present in the wavelet decomposition of natural...