Title :
Structured outlier models for robust dictionary learning
Author :
Forero, Pedro A. ; Shafer, Scott ; Harguess, Josh
Author_Institution :
SPAWAR Syst. Center Pacific, San Diego, CA, USA
Abstract :
Robust dictionary learning algorithms seek to learn a dictionary while being robust to the presence of outliers in the training set. Often, the elements of the training set have an underlying structure due to, for example, their spatial relation or their similarity. When outliers are present as elements of the training set, they often inherit the underlying structure of the training set. This work capitalizes on such structure, encoded as an undirected graph connecting elements of the training set, and on sparsity-aware outlier modeling tools to develop robust dictionary learning algorithms. Not only do these algorithms yield a robust dictionary, but they also identify the outliers in the training set. Computationally efficient algorithms based on block coordinate descent and proximal gradient methods are developed.
Keywords :
graph theory; learning (artificial intelligence); block coordinate descent method; proximal gradient method; robust dictionary learning algorithm; sparsity-aware outlier modeling tool; structured outlier model; undirected graph; Convergence; Dictionaries; Laplace equations; Optimization; Robustness; Sparse matrices; Training; Dictionary learning; Laplacian regularization; proximal gradient algorithms;
Conference_Titel :
Information Sciences and Systems (CISS), 2015 49th Annual Conference on
Conference_Location :
Baltimore, MD
DOI :
10.1109/CISS.2015.7086814