Abstract. Combining the properties of monovariate internal functions as proposed in Kolmogorov superimposition theorem, in tandem with the bounds wielded by the multivariate formulation of Chebyshev inequal-ity, a hybrid model is presented, that decomposes images into homoge-neous probabilistically bounded multivariate surfaces. Given an image, the model shows a novel way of working on reduced image representation while processing and capturing the interaction among the multidimen-sional information that describes the content of the same. Further, it tackles the practical issues of preventing leakage by bounding the growth of surface and reducing the problem sample size. The model if used, also sheds light on how the Chebyshev parameter rel...
Visualizing the dynamics of n-dimensional graphics is made possible by high speed, high quality comp...
Boundary detection is a fundamental problem in computer vision. However, bound-ary detection is diff...
This paper advocates the use of multi-coloured polygonal Markov fields for model-based image segment...
International audienceUsing Kolmogorov's superposition theorem, complex N-dimensional signal can be ...
International audienceThis paper deals with the decomposition of multivariate functions into sums an...
This paper deals with the decomposition of multivariate functions into sums and compositions of mono...
International audienceIn this paper, we present the problem of multivariate function decompositions ...
Abstract. Kolmogorov Superposition Theorem stands that any multi-variate function can be decomposed ...
This thesis addresses the multivariate super-resolution problem commonly encountered in pixelized im...
International audienceWe propose a new compression approached based on the decomposition of images i...
Abstract-We use a statistical framework for finding boundaries and for partitioning scenes into homo...
We address the problem of scale selection in texture analysis. Two different scale parameters, featu...
We address the problem of scale selection in texture analysis. Two different scale parameters, featu...
Boundary detection is a fundamental problem in computer vision. However, bound-ary detection is diff...
Abstract-Computer vision systems attempt to recover useful infor-mation about the three-dimensional ...
Visualizing the dynamics of n-dimensional graphics is made possible by high speed, high quality comp...
Boundary detection is a fundamental problem in computer vision. However, bound-ary detection is diff...
This paper advocates the use of multi-coloured polygonal Markov fields for model-based image segment...
International audienceUsing Kolmogorov's superposition theorem, complex N-dimensional signal can be ...
International audienceThis paper deals with the decomposition of multivariate functions into sums an...
This paper deals with the decomposition of multivariate functions into sums and compositions of mono...
International audienceIn this paper, we present the problem of multivariate function decompositions ...
Abstract. Kolmogorov Superposition Theorem stands that any multi-variate function can be decomposed ...
This thesis addresses the multivariate super-resolution problem commonly encountered in pixelized im...
International audienceWe propose a new compression approached based on the decomposition of images i...
Abstract-We use a statistical framework for finding boundaries and for partitioning scenes into homo...
We address the problem of scale selection in texture analysis. Two different scale parameters, featu...
We address the problem of scale selection in texture analysis. Two different scale parameters, featu...
Boundary detection is a fundamental problem in computer vision. However, bound-ary detection is diff...
Abstract-Computer vision systems attempt to recover useful infor-mation about the three-dimensional ...
Visualizing the dynamics of n-dimensional graphics is made possible by high speed, high quality comp...
Boundary detection is a fundamental problem in computer vision. However, bound-ary detection is diff...
This paper advocates the use of multi-coloured polygonal Markov fields for model-based image segment...