This paper proposes a novel descriptor, referred to as the localized angular phase (LAP), which is robust to illumination, scaling, and image blurring. LAP utilizes the phase information from the Fourier transform of the pixels in localized polar space with a fixed radius. The application examples of LAP are presented in terms of content-based image retrieval, classification, and feature extraction of realworld degraded images and computer-aided diagnosis using medical images. The experimental results show that the classification performance of LAP in terms of the latter application examples are better than those of local phase quantization (LPQ), local binary patterns (LBP), and local Fourier histogram (LFH). Specially, the capability of ...
Texture Analysis plays an important role in image analysis and pattern recognition. Now texture-base...
A method for rotation and scale invariant texture segmentation is proposed, which can be also employ...
In this paper, we compare different state-of-the-art texture descriptors to discriminate tissues in ...
Image quality is often degraded by blur caused by, for example, misfocused optics or camera motion. ...
Abstract Pattern recognition and registration are integral elements of computer vision, which consid...
Texture plays an increasingly important role in computer vision. It has found wide application in re...
In this paper, we propose a new feature extraction method, which is robust against rotation and hist...
Texture Analysis plays an important role in image analysis and pattern recognition. Now texture-base...
AbstractIn this paper, we address the problem of face recognition of low-resolution images under var...
Abstract: Image textural analysis technology has been widely used in the design of automated defect ...
Local Binary Pattern (LBP) are considered as a classical descriptor for texture analysis, it has mos...
Illumination-invariant method for computing local feature points and descriptors, referred to as LUm...
We propose a novel technique for detecting rotation- and scale-invariant interest points from the lo...
The (semi-) automatic detection of significant (feature) points is a key task in in vivo assessment ...
International audienceLocal Binary Pattern (LBP) are considered as a classical descriptor for textur...
Texture Analysis plays an important role in image analysis and pattern recognition. Now texture-base...
A method for rotation and scale invariant texture segmentation is proposed, which can be also employ...
In this paper, we compare different state-of-the-art texture descriptors to discriminate tissues in ...
Image quality is often degraded by blur caused by, for example, misfocused optics or camera motion. ...
Abstract Pattern recognition and registration are integral elements of computer vision, which consid...
Texture plays an increasingly important role in computer vision. It has found wide application in re...
In this paper, we propose a new feature extraction method, which is robust against rotation and hist...
Texture Analysis plays an important role in image analysis and pattern recognition. Now texture-base...
AbstractIn this paper, we address the problem of face recognition of low-resolution images under var...
Abstract: Image textural analysis technology has been widely used in the design of automated defect ...
Local Binary Pattern (LBP) are considered as a classical descriptor for texture analysis, it has mos...
Illumination-invariant method for computing local feature points and descriptors, referred to as LUm...
We propose a novel technique for detecting rotation- and scale-invariant interest points from the lo...
The (semi-) automatic detection of significant (feature) points is a key task in in vivo assessment ...
International audienceLocal Binary Pattern (LBP) are considered as a classical descriptor for textur...
Texture Analysis plays an important role in image analysis and pattern recognition. Now texture-base...
A method for rotation and scale invariant texture segmentation is proposed, which can be also employ...
In this paper, we compare different state-of-the-art texture descriptors to discriminate tissues in ...