Title :
Task-Driven Adaptive Statistical Compressive Sensing of Gaussian Mixture Models
Author :
Duarte-Carvajalino, J.M. ; Guoshen Yu ; Carin, Lawrence ; Sapiro, Guillermo
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Minnesota, Minneapolis, MN, USA
Abstract :
A framework for adaptive and non-adaptive statistical compressive sensing is developed, where a statistical model replaces the standard sparsity model of classical compressive sensing. We propose within this framework optimal task-specific sensing protocols specifically and jointly designed for classification and reconstruction. A two-step adaptive sensing paradigm is developed, where online sensing is applied to detect the signal class in the first step, followed by a reconstruction step adapted to the detected class and the observed samples. The approach is based on information theory, here tailored for Gaussian mixture models (GMMs), where an information-theoretic objective relationship between the sensed signals and a representation of the specific task of interest is maximized. Experimental results using synthetic signals, Landsat satellite attributes, and natural images of different sizes and with different noise levels show the improvements achieved using the proposed framework when compared to more standard sensing protocols. The underlying formulation can be applied beyond GMMs, at the price of higher mathematical and computational complexity.
Keywords :
Gaussian processes; compressed sensing; computational complexity; information theory; protocols; signal classification; signal reconstruction; Gaussian mixture models; Landsat satellite attributes; computational complexity; information theory; signal classification; signal reconstruction; standard sparsity model; task-driven adaptive statistical compressive sensing; task-specific sensing protocols; Adaptation models; Compressed sensing; Computational modeling; Dictionaries; Image reconstruction; Sensors; Adaptive compressive sensing; Gaussian mixture models; classification; mutual information; reconstruction; sequential hypothesis testing; task-driven sensing;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2012.2225054