This paper introduces a new generalisation of scale-space and pyramids, which combines statistical modelling with a spatial representation. The representation uses the familiar concept of multiple resolutions, but applied to a Gaussian mixture representation of the image - hence the title MGMM. It is shown that MGMM can approximate any probability density and can adapt to smooth motions. After a brief presentation of the theory, it is shown how MGMM can be applied to the estimation of visual motion
Abstract To track objects in video sequences, many studies have been done to characterize the target...
Modeling the statistics of natural images is a common problem in computer vision and computational n...
The analysis of visual motion against dense background clutter is a challenging problem. Uncertainty...
This paper introduces a new generalisation of scale-space and pyramids, which combines statistical m...
This paper introduces a new generalisation of scale-space and pyramids, which combines statistical m...
This paper introduces a new generalisation of scale-space and pyramids, which combines statistical m...
This paper introduces a new generalisation of scale-space and pyramids, which combines statistical m...
This paper introduces a generalization of scale-space and pyramids, which combines statistical model...
This paper introduces a new generalisation of scale-space and multiresolution pyramids, which combin...
This article investigates a new method of motion estimation based on block matching criterion throu...
This paper describes a new approach to the video modelling and segmentation problem using Gaussian m...
In this work we derive a novel framework rendering measured distributions into approximated distribu...
In this work we derive a novel framework rendering measured distributions into approximated distribu...
In this work we derive a novel framework rendering measured distributions into approximated distribu...
In this work we derive a novel framework rendering measured distributions into approximated distribu...
Abstract To track objects in video sequences, many studies have been done to characterize the target...
Modeling the statistics of natural images is a common problem in computer vision and computational n...
The analysis of visual motion against dense background clutter is a challenging problem. Uncertainty...
This paper introduces a new generalisation of scale-space and pyramids, which combines statistical m...
This paper introduces a new generalisation of scale-space and pyramids, which combines statistical m...
This paper introduces a new generalisation of scale-space and pyramids, which combines statistical m...
This paper introduces a new generalisation of scale-space and pyramids, which combines statistical m...
This paper introduces a generalization of scale-space and pyramids, which combines statistical model...
This paper introduces a new generalisation of scale-space and multiresolution pyramids, which combin...
This article investigates a new method of motion estimation based on block matching criterion throu...
This paper describes a new approach to the video modelling and segmentation problem using Gaussian m...
In this work we derive a novel framework rendering measured distributions into approximated distribu...
In this work we derive a novel framework rendering measured distributions into approximated distribu...
In this work we derive a novel framework rendering measured distributions into approximated distribu...
In this work we derive a novel framework rendering measured distributions into approximated distribu...
Abstract To track objects in video sequences, many studies have been done to characterize the target...
Modeling the statistics of natural images is a common problem in computer vision and computational n...
The analysis of visual motion against dense background clutter is a challenging problem. Uncertainty...