International audienceThe recently proposed principal component analysis network (PCANet) has performed well with respect to the classification of 2-D images. However, feature extraction may perform less well when dealing with multi-dimensional images, since the spatial relationships within the structures of the images are not fully utilized. In this paper, we develop a multilinear principal component analysis network (MPCANet), which is a tensor extension of PCANet, to extract the high-level semantic features from multi-dimensional images. The extracted features largely minimize the intraclass invariance of tensor objects by making efficient use of spatial relationships within multi-dimensional images. The proposed MPCANet outperforms trad...
Abstract—There is a growing interest in subspace learning tech-niques for face recognition; however,...
Abstract: Low dimensional linear spaces can viably demonstrate the image varieties of numerous objec...
© 2018, Springer Nature Switzerland AG. The principal component analysis network (PCANet) is an unsu...
International audienceThe recently proposed principal component analysis network (PCANet) has perfor...
International audienceThis paper proposes an multilinear discriminant analysis network (MLDANet) for...
International audienceThis paper proposes an multilinear discriminant analysis network (MLDANet) for...
International audienceThis paper proposes an multilinear discriminant analysis network (MLDANet) for...
In recent years, massive data sets are generated in many areas of science and business, and are gath...
This thesis introduces a multilinear algebraic framework for computer graphics, computer vision, and...
Abstract—Principal Components Analysis (PCA) has tradition-ally been utilized with data expressed in...
Linear dimensionality reduction techniques have been widely used in pattern recognition and computer...
With the booming of big data and multi-sensor technology, multi-dimensional data, known as tensors, ...
Linear dimensionality reduction techniques have been widely used in pattern recognition and computer...
Current methods capable of processing tensor objects in their natural higher-order structure have be...
Abstract—There is a growing interest in subspace learning tech-niques for face recognition; however,...
Abstract—There is a growing interest in subspace learning tech-niques for face recognition; however,...
Abstract: Low dimensional linear spaces can viably demonstrate the image varieties of numerous objec...
© 2018, Springer Nature Switzerland AG. The principal component analysis network (PCANet) is an unsu...
International audienceThe recently proposed principal component analysis network (PCANet) has perfor...
International audienceThis paper proposes an multilinear discriminant analysis network (MLDANet) for...
International audienceThis paper proposes an multilinear discriminant analysis network (MLDANet) for...
International audienceThis paper proposes an multilinear discriminant analysis network (MLDANet) for...
In recent years, massive data sets are generated in many areas of science and business, and are gath...
This thesis introduces a multilinear algebraic framework for computer graphics, computer vision, and...
Abstract—Principal Components Analysis (PCA) has tradition-ally been utilized with data expressed in...
Linear dimensionality reduction techniques have been widely used in pattern recognition and computer...
With the booming of big data and multi-sensor technology, multi-dimensional data, known as tensors, ...
Linear dimensionality reduction techniques have been widely used in pattern recognition and computer...
Current methods capable of processing tensor objects in their natural higher-order structure have be...
Abstract—There is a growing interest in subspace learning tech-niques for face recognition; however,...
Abstract—There is a growing interest in subspace learning tech-niques for face recognition; however,...
Abstract: Low dimensional linear spaces can viably demonstrate the image varieties of numerous objec...
© 2018, Springer Nature Switzerland AG. The principal component analysis network (PCANet) is an unsu...