This paper proposes a new texture classification approach. There are two main contributions in the proposed method. First, input texture images are transformed to the composite Fourier domain (CFD) by using both the local and global Fourier transforms. The composite Fourier domain is rotation invariant and preserves the contextual information for the texture images in the original spatial domain. Second, the null-space based linear discriminant analysis (nLDA) is adopted to find the optimal representations of the texture images in the composite Fourier domain. This paper proposes a systematic way to cooperate subspace learning methods for texture classification in the frequency domain, which cannot be directly applied in the spatial domain ...
This work proposes the development and study of a novel technique lot the generation of fractal desc...
International audienceThis paper presents an improved version of the features based on Discrete Four...
Abstract—Texture is often considered as a repetitive pat-tern and the constructing structure is know...
Texture plays an increasingly important role in computer vision. It has found wide application in re...
Texture is an important image feature and is defined as something consisting of mutually related ele...
Abstract—The recent years have witnessed a surge of interests of learning a subspace for image class...
Texture Analysis plays an important role in image analysis and pattern recognition. Now texture-base...
To extend the application of the fractional Fourier transform (FrFT) as well as to present an effici...
Texture Analysis plays an important role in image analysis and pattern recognition. Now texture-base...
Since texture is scale dependent, multi-scale techniques are quite usefulfor texture classification....
Kernel Fisher discriminant (KFD) is a state-of-the-art nonlinear machine learning method, and it has...
Since texture is scale dependent, multi-scale techniques are quite usefulfor texture classification....
Since texture is scale dependent, multi-scale techniques are quite usefulfor texture classification....
Since texture is scale dependent, multi-scale techniques are quite usefulfor texture classification....
International audienceThis paper presents an improved version of the features based on Discrete Four...
This work proposes the development and study of a novel technique lot the generation of fractal desc...
International audienceThis paper presents an improved version of the features based on Discrete Four...
Abstract—Texture is often considered as a repetitive pat-tern and the constructing structure is know...
Texture plays an increasingly important role in computer vision. It has found wide application in re...
Texture is an important image feature and is defined as something consisting of mutually related ele...
Abstract—The recent years have witnessed a surge of interests of learning a subspace for image class...
Texture Analysis plays an important role in image analysis and pattern recognition. Now texture-base...
To extend the application of the fractional Fourier transform (FrFT) as well as to present an effici...
Texture Analysis plays an important role in image analysis and pattern recognition. Now texture-base...
Since texture is scale dependent, multi-scale techniques are quite usefulfor texture classification....
Kernel Fisher discriminant (KFD) is a state-of-the-art nonlinear machine learning method, and it has...
Since texture is scale dependent, multi-scale techniques are quite usefulfor texture classification....
Since texture is scale dependent, multi-scale techniques are quite usefulfor texture classification....
Since texture is scale dependent, multi-scale techniques are quite usefulfor texture classification....
International audienceThis paper presents an improved version of the features based on Discrete Four...
This work proposes the development and study of a novel technique lot the generation of fractal desc...
International audienceThis paper presents an improved version of the features based on Discrete Four...
Abstract—Texture is often considered as a repetitive pat-tern and the constructing structure is know...