Sparse dictionary learning has attracted enormous interest in image processing and data representation in recent years. To improve the performance of dictionary learning, we propose an efficient block-structured incoherent K-SVD algorithm for the sparse representation of signals. Without relying on any prior knowledge of the group structure for the input data, we develop a two-stage agglomerative hierarchical clustering method for block sparse representations. This clustering method adaptively identifies the underlying block structure of the dictionary under the restricted conditions of both a maximal block size and a minimal distance between the blocks. Furthermore, to meet the constraints of both the upper bound and the lower bound of the...
Dictionary learning for sparse representation has been an ac-tive topic in the field of image proces...
Recent dictionary training algorithms for sparse representation like K-SVD, MOD, and their variation...
Many techniques in computer vision, machine learning, and statistics rely on the fact that a signal ...
Abstract This paper introduces a novel design for the dictionary learning algorithm, intended for sc...
This paper introduces a novel design for the dictionary learning algorithm, intended for scalable sp...
This paper introduces a novel design for the dictionary learning algorithm, intended for scalable sp...
This paper proposes a dictionary learning framework that combines the proposed block/group (BGSC) or...
International audienceWe introduce a new method to learn an adaptive dictionary structure suitable f...
International audienceWe introduce a new method to learn an adaptive dictionary structure suitable f...
Abstract—We introduce a new method to learn an adaptive dictionary structure suitable for efficient ...
International audienceWe introduce a new method, called Tree K-SVD, to learn a tree-structured dicti...
Dictionary learning and sparse representation are efficient methods for single-image super-resolutio...
International audienceWe introduce a new method, called Tree K-SVD, to learn a tree-structured dicti...
We introduce a new method, called Tree K-SVD, to learn a tree-structured dictionary for sparse repre...
Abstract Sparse representation has been widely used in machine learning, signal processing and commu...
Dictionary learning for sparse representation has been an ac-tive topic in the field of image proces...
Recent dictionary training algorithms for sparse representation like K-SVD, MOD, and their variation...
Many techniques in computer vision, machine learning, and statistics rely on the fact that a signal ...
Abstract This paper introduces a novel design for the dictionary learning algorithm, intended for sc...
This paper introduces a novel design for the dictionary learning algorithm, intended for scalable sp...
This paper introduces a novel design for the dictionary learning algorithm, intended for scalable sp...
This paper proposes a dictionary learning framework that combines the proposed block/group (BGSC) or...
International audienceWe introduce a new method to learn an adaptive dictionary structure suitable f...
International audienceWe introduce a new method to learn an adaptive dictionary structure suitable f...
Abstract—We introduce a new method to learn an adaptive dictionary structure suitable for efficient ...
International audienceWe introduce a new method, called Tree K-SVD, to learn a tree-structured dicti...
Dictionary learning and sparse representation are efficient methods for single-image super-resolutio...
International audienceWe introduce a new method, called Tree K-SVD, to learn a tree-structured dicti...
We introduce a new method, called Tree K-SVD, to learn a tree-structured dictionary for sparse repre...
Abstract Sparse representation has been widely used in machine learning, signal processing and commu...
Dictionary learning for sparse representation has been an ac-tive topic in the field of image proces...
Recent dictionary training algorithms for sparse representation like K-SVD, MOD, and their variation...
Many techniques in computer vision, machine learning, and statistics rely on the fact that a signal ...