Title :
Local smoothness maps: a new method for solving inverse problems with the accurate recovery of sharp gradients
Author :
Roumeliotis, George
Author_Institution :
Stanford Univ., CA, USA
fDate :
8/1/1997 12:00:00 AM
Abstract :
We describe a novel Bayesian approach to solving inverse problems by simultaneously estimating the reconstructed signal and the local smoothness map (LSM), which is a generalization of the global smoothness parameter that is often used to stabilize inverse problems. The greater flexibility afforded by the introduction of the local smoothness map makes the new method very effective on inverse problems that involve discontinuities or other regions with sharp gradients. We demonstrate the LSM method on the problem of reducing noise in one-dimensional (1-D) signals
Keywords :
Bayes methods; interference suppression; inverse problems; parameter estimation; signal reconstruction; smoothing methods; Bayesian approach; discontinuities; global smoothness parameter; inverse problems; local smoothness map; noise reduction; one-dimensional signals; reconstructed signal estimation; sharp gradients recovery; Attenuation; Bayesian methods; Design methodology; Filter bank; Finite impulse response filter; Inverse problems; Prototypes; Sampling methods; Signal processing; Speech processing;
Journal_Title :
Signal Processing, IEEE Transactions on