Probabilistic adaptive wavelet packet models of texture provide new insight into texture structure and statistics by focusing the analysis on significant structure in frequency space. In very adapted subbands, they have revealed new bimodal statistics, corresponding to the structure inherent to a texture, and strong dependencies between such bimodal subbands, related to phase coherence in a texture. Existing models can capture the former but not the latter. As a first step towards modelling the joint statistics, and in order to simplify earlier approaches, we introduce a new parametric family of models capable of modelling both bimodal and unimodal subbands, and of being generalized to capture the joint statistics. We show how to compute MA...
Remote sensing imagery plays an important role in many fields. It has become an invaluable tool for ...
To be published as a conference paper at the International Conference on Learning Representations (I...
This correspondence introduces a new approach to characterize textures at multiple scales. The perfo...
Probabilistic adaptive wavelet packet models of texture pro-vide new insight into texture structure ...
Although subband histograms of the wavelet coefficients of natural images possess a characteristic l...
We discuss the use of adaptive biorthogonal wavelet packet bases in a probabilistic approach to text...
Two main issues arise when working in the area of texture segmentation: the need to describe the tex...
In recent work, it was noted that although the subband histograms for standard wavelet coefficients ...
Remote sensing imagery plays an important role in many fields. It has become an invaluable tool for...
Classification results obtained using wavelet-based texture analysis techniques vary with the choice...
The subband histograms of wavelet packet bases adapted to individual texture classes often fail to d...
Abstract. We present a universal statistical model for texture images in the context of an overcompl...
In recent work, it was noted that although the subband his-tograms for standard wavelet coefcients t...
We discuss the use of texture-adaptive mother wavelets in an adaptive probabilistic wavelet packet a...
In recent work, it was noted that although the subband histograms for standard wavelet coefcients t...
Remote sensing imagery plays an important role in many fields. It has become an invaluable tool for ...
To be published as a conference paper at the International Conference on Learning Representations (I...
This correspondence introduces a new approach to characterize textures at multiple scales. The perfo...
Probabilistic adaptive wavelet packet models of texture pro-vide new insight into texture structure ...
Although subband histograms of the wavelet coefficients of natural images possess a characteristic l...
We discuss the use of adaptive biorthogonal wavelet packet bases in a probabilistic approach to text...
Two main issues arise when working in the area of texture segmentation: the need to describe the tex...
In recent work, it was noted that although the subband histograms for standard wavelet coefficients ...
Remote sensing imagery plays an important role in many fields. It has become an invaluable tool for...
Classification results obtained using wavelet-based texture analysis techniques vary with the choice...
The subband histograms of wavelet packet bases adapted to individual texture classes often fail to d...
Abstract. We present a universal statistical model for texture images in the context of an overcompl...
In recent work, it was noted that although the subband his-tograms for standard wavelet coefcients t...
We discuss the use of texture-adaptive mother wavelets in an adaptive probabilistic wavelet packet a...
In recent work, it was noted that although the subband histograms for standard wavelet coefcients t...
Remote sensing imagery plays an important role in many fields. It has become an invaluable tool for ...
To be published as a conference paper at the International Conference on Learning Representations (I...
This correspondence introduces a new approach to characterize textures at multiple scales. The perfo...