Recently feature extraction methods have commonly been used as a principled approach to understand the intrinsic structure hidden in high-dimensional data. In this paper, a novel supervised learning method, called Supervised Sparsity Preserving Projections (SSPP), is proposed. SSPP attempts to preserve the sparse representation structure of the data when identifying an efficient discriminant subspace. First, SSPP creates a concatenated dictionary by class-wise PCA decompositions and learns the sparse representation structure of each sample under the constructed dictionary using the least squares method. Second, by maximizing the ratio of non-local scatter to local scatter, a Laplacian discriminant function is defined to characterize the sep...
A sparse representation-based classifier (SRC) is developed and shows great potential for real-world...
In this paper, we present a new approach for face recognition that is robust against both poorly def...
Previous works have demonstrated that the face recognition performance can be improved significantly...
Dimensionality reduction is extremely important for understanding the intrinsic structure hidden in ...
We consider the problem of sparse subspace learning for data classification and face recognition. Ne...
As a dominant method for face recognition, the subspace learning algorithm shows desirable performan...
Abstract: Dimensionality reduction methods (DRs) have commonly been used as a principled way to unde...
In this paper, we propose two novel sparse representation based dimension reduction approaches for f...
Image classification and face recognition has been a popular subject matter for the last several dec...
Abstract--As one of the most popular research topics, sparse representation (SR) technique has been ...
Abstract How to define the sparse affinity weight matrices is still an open problem in existing mani...
Graph construction plays an important role in graph-oriented subspace learning. However, most existi...
Abstract: Single training image face recognition is one of main challenges to appearance-based patte...
AbstractThe sparse manifold clustering and embedding (SMCE) algorithm can be used to find a low-dime...
Building a computer as intelligent as or more intelligent than human is the ultimate goal of machine...
A sparse representation-based classifier (SRC) is developed and shows great potential for real-world...
In this paper, we present a new approach for face recognition that is robust against both poorly def...
Previous works have demonstrated that the face recognition performance can be improved significantly...
Dimensionality reduction is extremely important for understanding the intrinsic structure hidden in ...
We consider the problem of sparse subspace learning for data classification and face recognition. Ne...
As a dominant method for face recognition, the subspace learning algorithm shows desirable performan...
Abstract: Dimensionality reduction methods (DRs) have commonly been used as a principled way to unde...
In this paper, we propose two novel sparse representation based dimension reduction approaches for f...
Image classification and face recognition has been a popular subject matter for the last several dec...
Abstract--As one of the most popular research topics, sparse representation (SR) technique has been ...
Abstract How to define the sparse affinity weight matrices is still an open problem in existing mani...
Graph construction plays an important role in graph-oriented subspace learning. However, most existi...
Abstract: Single training image face recognition is one of main challenges to appearance-based patte...
AbstractThe sparse manifold clustering and embedding (SMCE) algorithm can be used to find a low-dime...
Building a computer as intelligent as or more intelligent than human is the ultimate goal of machine...
A sparse representation-based classifier (SRC) is developed and shows great potential for real-world...
In this paper, we present a new approach for face recognition that is robust against both poorly def...
Previous works have demonstrated that the face recognition performance can be improved significantly...