The major aim of this paper consists of a comprehensive quantitative evaluation of adaptive texture descriptors when integrated into an unsupervised image segmentation framework. The techniques involved in this evaluation are: the standard and rotation invariant Local Binary Pattern (LBP) operators, multichannel texture decomposition based on Gabor filters and a recently proposed technique that analyses the distribution of dominant image orientations at both micro and macro levels. These selected descriptors share two essential properties: (a) they evaluate the texture information at micro-level in small neighborhoods, while (b) the distributions of the local features calculated from texture units describe the texture at macrolevel. This ad...
Textured regions in images can be defined as those regions containing a signal which has some measur...
This paper presents a multiple resolution algorithm for segmenting images into regions with differin...
Abstract—This paper presents the development of an unsuper-vised image segmentation framework (refer...
The major aim of this paper consists of a comprehensive quantitative evaluation of adaptive texture ...
This study is dedicated to the problem of segmenting monochrome images into distinct homogeneous reg...
This chapter presents a novel and generic framework for image segmentation using a compound image de...
The aim of this paper is to evaluate quantitatively the discriminative power of the image orientatio...
The problem of unsupervised texture segmentation was studied and a texture segmentation algorithm wa...
This paper presents the development of an unsupervised image segmentation framework (referred to as ...
With the dramatic expansion of image information nowadays, image processing and computer visions are...
Colour and texture are the most common features used in image processing and computer vision applica...
Analysing micro- and macro-structures within images confers ability to include scale in texture anal...
The paper introduces a new method of texture segmentation efficiency evaluation. One of the well kno...
A method of rotation and scale invariant texture segmentation is proposed, which can also be employe...
In this paper, an adaptive and robust unsupervised texture segmentation algorithm is proposed. One o...
Textured regions in images can be defined as those regions containing a signal which has some measur...
This paper presents a multiple resolution algorithm for segmenting images into regions with differin...
Abstract—This paper presents the development of an unsuper-vised image segmentation framework (refer...
The major aim of this paper consists of a comprehensive quantitative evaluation of adaptive texture ...
This study is dedicated to the problem of segmenting monochrome images into distinct homogeneous reg...
This chapter presents a novel and generic framework for image segmentation using a compound image de...
The aim of this paper is to evaluate quantitatively the discriminative power of the image orientatio...
The problem of unsupervised texture segmentation was studied and a texture segmentation algorithm wa...
This paper presents the development of an unsupervised image segmentation framework (referred to as ...
With the dramatic expansion of image information nowadays, image processing and computer visions are...
Colour and texture are the most common features used in image processing and computer vision applica...
Analysing micro- and macro-structures within images confers ability to include scale in texture anal...
The paper introduces a new method of texture segmentation efficiency evaluation. One of the well kno...
A method of rotation and scale invariant texture segmentation is proposed, which can also be employe...
In this paper, an adaptive and robust unsupervised texture segmentation algorithm is proposed. One o...
Textured regions in images can be defined as those regions containing a signal which has some measur...
This paper presents a multiple resolution algorithm for segmenting images into regions with differin...
Abstract—This paper presents the development of an unsuper-vised image segmentation framework (refer...