Parsimony, including sparsity and low-rank, has shown great importance for data mining in social networks, particularly in tasks such as segmentation and recognition. Traditionally, such modeling approaches rely on an iterative algorithm that minimizes an objective function with convex l1-norm or nuclear norm constraints. However, the obtained results by convex optimization are usually suboptimal to solutions of original sparse or low-rank problems. In this paper, a novel robust subspace segmentation algorithm has been proposed by integrating lp-norm and Schatten p-norm constraints. Our so-obtained affinity graph can better capture local geometrical structure and the global information of the data. As a consequence, our algorithm is more ge...
Many real-world problems deal with collections of high-dimensional data, such as images, videos, tex...
Subspace segmentation is the process of clustering a set of data points that are assumed to lie on t...
In many applications, high-dimensional data points can be well represented by low-dimensional subspa...
We analyze and improve low rank representation (LRR), the state-of-the-art algorithm for subspace se...
Vision problems ranging from image clustering to mo-tion segmentation to semi-supervised learning ca...
Abstract—Recently there is a line of research work proposing to employ Spectral Clustering (SC) to s...
ii In this dissertation, we discuss the problem of robust linear subspace estimation using low-rank ...
Subspace segmentation is the problem of segmenting (or grouping) a set of n data points into a numbe...
Low-rank representation (LRR) has been successfully applied in exploring the subspace structures of ...
We propose a low-rank transformation-learning framework to robustify sub-space clustering. Many high...
This letter examines the problem of robust subspace discovery from input data samples (instances) in...
© 2017 SPIE. Low-rank representation (LRR) has been successfully applied to subspace clustering. How...
We consider subspace clustering under sparse noise, for which a non-convex optimization framework ba...
Subspace clustering has been widely applied to detect meaningful clusters in high-dimensional data s...
Learning a low-dimensional structure plays an impor-tant role in computer vision. Recently, a new fa...
Many real-world problems deal with collections of high-dimensional data, such as images, videos, tex...
Subspace segmentation is the process of clustering a set of data points that are assumed to lie on t...
In many applications, high-dimensional data points can be well represented by low-dimensional subspa...
We analyze and improve low rank representation (LRR), the state-of-the-art algorithm for subspace se...
Vision problems ranging from image clustering to mo-tion segmentation to semi-supervised learning ca...
Abstract—Recently there is a line of research work proposing to employ Spectral Clustering (SC) to s...
ii In this dissertation, we discuss the problem of robust linear subspace estimation using low-rank ...
Subspace segmentation is the problem of segmenting (or grouping) a set of n data points into a numbe...
Low-rank representation (LRR) has been successfully applied in exploring the subspace structures of ...
We propose a low-rank transformation-learning framework to robustify sub-space clustering. Many high...
This letter examines the problem of robust subspace discovery from input data samples (instances) in...
© 2017 SPIE. Low-rank representation (LRR) has been successfully applied to subspace clustering. How...
We consider subspace clustering under sparse noise, for which a non-convex optimization framework ba...
Subspace clustering has been widely applied to detect meaningful clusters in high-dimensional data s...
Learning a low-dimensional structure plays an impor-tant role in computer vision. Recently, a new fa...
Many real-world problems deal with collections of high-dimensional data, such as images, videos, tex...
Subspace segmentation is the process of clustering a set of data points that are assumed to lie on t...
In many applications, high-dimensional data points can be well represented by low-dimensional subspa...