Title :
A Compressive Sensing and Unmixing Scheme for Hyperspectral Data Processing
Author :
Li, Chengbo ; Sun, Ting ; Kelly, Kevin F. ; Zhang, Yin
Author_Institution :
Dept. of Comput. & Appl. Math., Rice Univ., Houston, TX, USA
fDate :
3/1/2012 12:00:00 AM
Abstract :
Hyperspectral data processing typically demands enormous computational resources in terms of storage, computation, and input/output throughputs, particularly when real-time processing is desired. In this paper, a proof-of-concept study is conducted on compressive sensing (CS) and unmixing for hyperspectral imaging. Specifically, we investigate a low-complexity scheme for hyperspectral data compression and reconstruction. In this scheme, compressed hyperspectral data are acquired directly by a device similar to the single-pixel camera based on the principle of CS. To decode the compressed data, we propose a numerical procedure to compute directly the unmixed abundance fractions of given end members, completely bypassing high-complexity tasks involving the hyperspectral data cube itself. The reconstruction model is to minimize the total variation of the abundance fractions subject to a preprocessed fidelity equation with a significantly reduced size and other side constraints. An augmented Lagrangian-type algorithm is developed to solve this model. We conduct extensive numerical experiments to demonstrate the feasibility and efficiency of the proposed approach, using both synthetic data and hardware-measured data. Experimental and computational evidences obtained from this paper indicate that the proposed scheme has a high potential in real-world applications.
Keywords :
data compression; image coding; image reconstruction; multidimensional signal processing; Lagrangian-type algorithm; compressive sensing; hyperspectral data compression; hyperspectral data cube; hyperspectral data processing; hyperspectral imaging; image reconstruction; real-time processing; single-pixel camera; unmixing scheme; Compressed sensing; Hyperspectral imaging; Image coding; Mathematical model; Numerical models; TV; Augmented Lagrangian method; compressive sensing (CS); data unmixing; fast Walsh–Hadamard transform; hyperspectral imaging; total variation (TV);
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2011.2167626