Title :
Learning Low-Dimensional Signal Models
Author :
Carin, Lawrence ; Baraniuk, Richard G. ; Cevher, Volkan ; Dunson, David ; Jordan, Michael I. ; Sapiro, Guillermo ; Wakin, Michael B.
Author_Institution :
Electr. Eng., Univ. of Maryland, College Park, MD, USA
fDate :
3/1/2011 12:00:00 AM
Abstract :
Sampling, coding, and streaming even the most essential data, e.g., in medical imaging and weather-monitoring applications, produce a data deluge that severely stresses the avail able analog-to-digital converter, communication bandwidth, and digital-storage resources. Surprisingly, while the ambient data dimension is large in many problems, the relevant information in the data can reside in a much lower dimensional space. This observation has led to several important theoretical and algorithmic developments under different low-dimensional modeling frameworks, such as compressive sensing (CS), matrix completion, and general factor-model representations. These approaches have enabled new measurement systems, tools, and methods for information extraction from dimensionality-reduced or incomplete data. A key aspect of maximizing the potential of such techniques is to develop appropriate data models. In this article, we investigate this challenge from the perspective of nonparametric Bayesian analysis.
Keywords :
Bayes methods; data models; data models; low-dimensional signal models; nonparametric Bayesian analysis; Analytical models; Bayesian methods; Data models; Manifolds; Monitoring; Training data;
Journal_Title :
Signal Processing Magazine, IEEE
DOI :
10.1109/MSP.2010.939733