To be published as a conference paper at the International Conference on Learning Representations (ICLR) 2022International audienceState-of-the-art maximum entropy models for texture synthesis are built from statistics relying on image representations defined by convolutional neural networks (CNN). Such representations capture rich structures in texture images, outperforming wavelet-based representations in this regard. However, conversely to neural networks, wavelets offer meaningful representations, as they are known to detect structures at multiple scales (e.g. edges) in images. In this work, we propose a family of statistics built upon non-linear wavelet based representations, that can be viewed as a particular instance of a one-layer C...
This correspondence introduces a new approach to characterize textures at multiple scales. The perfo...
We present a parametric statistical model for visual images in the wavelet transform domain. We char...
This paper presents a mathematical framework for visual learning that integrates two popular statist...
To be published as a conference paper at the International Conference on Learning Representations (I...
To be published as a conference paper at the International Conference on Learning Representations (I...
Natural images can be viewed as patchworks of different textures, where the local image statistics i...
Natural images can be viewed as patchworks of different textures, where the local image statistics i...
Here we introduce a new model of natural textures based on the feature spaces of convolutional neura...
Natural images can be viewed as patchworks of different textures, where the local image statistics i...
Abstract. We present a universal statistical model for texture images in the context of an overcompl...
We present a statistical characterization of texture images in the context of an over-complete compl...
We present a parametric statistical model for visual images in the wavelet transform domain. We char...
Probabilistic adaptive wavelet packet models of texture provide new insight into texture structure a...
Abstract- This correspondence introduces a new approach to char-acterize textures at multiple scales...
This paper presents a class of statistical models that integrate two statistical modeling paradigms ...
This correspondence introduces a new approach to characterize textures at multiple scales. The perfo...
We present a parametric statistical model for visual images in the wavelet transform domain. We char...
This paper presents a mathematical framework for visual learning that integrates two popular statist...
To be published as a conference paper at the International Conference on Learning Representations (I...
To be published as a conference paper at the International Conference on Learning Representations (I...
Natural images can be viewed as patchworks of different textures, where the local image statistics i...
Natural images can be viewed as patchworks of different textures, where the local image statistics i...
Here we introduce a new model of natural textures based on the feature spaces of convolutional neura...
Natural images can be viewed as patchworks of different textures, where the local image statistics i...
Abstract. We present a universal statistical model for texture images in the context of an overcompl...
We present a statistical characterization of texture images in the context of an over-complete compl...
We present a parametric statistical model for visual images in the wavelet transform domain. We char...
Probabilistic adaptive wavelet packet models of texture provide new insight into texture structure a...
Abstract- This correspondence introduces a new approach to char-acterize textures at multiple scales...
This paper presents a class of statistical models that integrate two statistical modeling paradigms ...
This correspondence introduces a new approach to characterize textures at multiple scales. The perfo...
We present a parametric statistical model for visual images in the wavelet transform domain. We char...
This paper presents a mathematical framework for visual learning that integrates two popular statist...