A new segmentation fusion method is proposed that ensembles the output of several segmentation algorithms applied on a remotely sensed image. The candidate segmentation sets are processed to achieve a consensus segmentation using a stochastic optimization algorithm based on the Filtered Stochastic BOEM (Best One Element Move) method. For this purpose, Filtered Stochastic BOEM is reformulated as a segmentation fusion problem by designing a new distance learning approach. The proposed algorithm also embeds the computation of the optimum number of clusters into the segmentation fusion problem
The proposed work was aimed to evaluate the hybridization of fuzzy C- means and competitive agglomer...
Image segmentation is an important problem that has received significant attention in the literature...
We present a method for merging multiple partitions into a single partition, by minimising the ratio...
In this study, a fast and efficient consensus segmentation method is proposed which fuses a set of b...
This paper presents a general framework for seamlessly combining multiple low cost and inaccurate es...
A new framework for adapting common ensemble clustering methods to solve the image segmentation comb...
Abstract—Image segmentation is a fundamental task of image processing that consists in partitioning ...
International audienceImage segmentation is generally performed in a "one image, one algorithm" para...
Abstract: In this paper, an alternative method based on decision fusion is presented to improve the ...
In this article we present a system for coupling different base algorithms and sensors for segmentat...
Abstract: Image segmentation has been, and still is, a relevant research area in Computer Vision, an...
Abstract–A new simple and efficient segmentation approach based on a fusion procedure is implemented...
Natural image segmentation plays an important role in the fields of image processing and computer vi...
Unsupervised fuzzy clustering algorithms are one of many approaches used in image segmentation. The ...
Image segmentation is the foundation of computer vision applications. In this paper, we propose a ne...
The proposed work was aimed to evaluate the hybridization of fuzzy C- means and competitive agglomer...
Image segmentation is an important problem that has received significant attention in the literature...
We present a method for merging multiple partitions into a single partition, by minimising the ratio...
In this study, a fast and efficient consensus segmentation method is proposed which fuses a set of b...
This paper presents a general framework for seamlessly combining multiple low cost and inaccurate es...
A new framework for adapting common ensemble clustering methods to solve the image segmentation comb...
Abstract—Image segmentation is a fundamental task of image processing that consists in partitioning ...
International audienceImage segmentation is generally performed in a "one image, one algorithm" para...
Abstract: In this paper, an alternative method based on decision fusion is presented to improve the ...
In this article we present a system for coupling different base algorithms and sensors for segmentat...
Abstract: Image segmentation has been, and still is, a relevant research area in Computer Vision, an...
Abstract–A new simple and efficient segmentation approach based on a fusion procedure is implemented...
Natural image segmentation plays an important role in the fields of image processing and computer vi...
Unsupervised fuzzy clustering algorithms are one of many approaches used in image segmentation. The ...
Image segmentation is the foundation of computer vision applications. In this paper, we propose a ne...
The proposed work was aimed to evaluate the hybridization of fuzzy C- means and competitive agglomer...
Image segmentation is an important problem that has received significant attention in the literature...
We present a method for merging multiple partitions into a single partition, by minimising the ratio...