Histogram (bag-of-words) and Gaussian mixture models (GMMs) have been widely used in patch-based image classification problems. Despite the satisfactory results reported, both methods suffer from a number of disadvantages. For instance, a histogram may be easy to learn but has a large quantization error; on the contrary, Gaussian mixture model based methods have better modeling capabilities but are inefficient in both learning and testing. In this thesis, we present a novel hierarchical density estimation approach for image classification. This new approach partitions the feature space into small regions using a tree structure. For each region, "local" distribution is characterized by class-conditional Gaussians via hierarchical maximum a p...
Recent results have shown that Gaussian mixture models (GMMs) are remarkably good at density modelin...
In this article, image histogram thresholding is carried out using the likelihood of a mixture of Ga...
High dimensional spaces pose a serious challenge to the learning process. It is a combination of lim...
Histogram (bag-of-words) and Gaussian mixture models (GMMs) have been widely used in patch-based ima...
Previous research on automatic image annotation has shown that accurate estimates of the class condi...
A novel image representation is proposed in this thesis to capture both the appearance and locality ...
In recent years, Bayesian approach using Gaussian model as a patch prior has achieved great success ...
The Bag of Words paradigm has been the baseline from which several successful image classification s...
We present Gaussian mixture trees for density estimation and one class classification. A Gaussian mi...
Previous research showed highly efficient compression results for low bit-rates using Steered Mixtur...
Lately, the enormous generation of databases in almost every aspect of life has created a great dema...
Techniques based on Bag Of Words approach represent images by quantizing local descriptors and summa...
Techniques based on Bag Of Words approach represent images by quantizing local descriptors and summa...
International audienceThe CT uroscan contains three to four time-spaced acquisitions of the same pat...
This paper introduces a novel Gaussian process (GP) classification method that combines advantages o...
Recent results have shown that Gaussian mixture models (GMMs) are remarkably good at density modelin...
In this article, image histogram thresholding is carried out using the likelihood of a mixture of Ga...
High dimensional spaces pose a serious challenge to the learning process. It is a combination of lim...
Histogram (bag-of-words) and Gaussian mixture models (GMMs) have been widely used in patch-based ima...
Previous research on automatic image annotation has shown that accurate estimates of the class condi...
A novel image representation is proposed in this thesis to capture both the appearance and locality ...
In recent years, Bayesian approach using Gaussian model as a patch prior has achieved great success ...
The Bag of Words paradigm has been the baseline from which several successful image classification s...
We present Gaussian mixture trees for density estimation and one class classification. A Gaussian mi...
Previous research showed highly efficient compression results for low bit-rates using Steered Mixtur...
Lately, the enormous generation of databases in almost every aspect of life has created a great dema...
Techniques based on Bag Of Words approach represent images by quantizing local descriptors and summa...
Techniques based on Bag Of Words approach represent images by quantizing local descriptors and summa...
International audienceThe CT uroscan contains three to four time-spaced acquisitions of the same pat...
This paper introduces a novel Gaussian process (GP) classification method that combines advantages o...
Recent results have shown that Gaussian mixture models (GMMs) are remarkably good at density modelin...
In this article, image histogram thresholding is carried out using the likelihood of a mixture of Ga...
High dimensional spaces pose a serious challenge to the learning process. It is a combination of lim...