Title :
Sparse poisson intensity reconstruction algorithms
Author :
Harmany, Zachary T. ; Marcia, Roummel F. ; Willett, Rebecca M.
Author_Institution :
Dept. of Electr. & Comput. Eng., Duke Univ., Durham, NC, USA
Abstract :
The observations in many applications consist of counts of discrete events, such as photons hitting a detector, which cannot be effectively modeled using an additive bounded or Gaussian noise model, and instead require a Poisson noise model. As a result, accurate reconstruction of a spatially or temporally distributed phenomenon (f) from Poisson data (y) cannot be accomplished by minimizing a conventional lscr2 - lscr1 objective function. The problem addressed in this paper is the estimation of f from y in an inverse problem setting, where (a) the number of unknowns may potentially be larger than the number of observations and (b) f admits a sparse approximation in some basis. The optimization formulation considered in this paper uses a negative Poisson log-likelihood objective function with nonnegativity constraints (since Poisson intensities are naturally nonnegative). This paper describes computational methods for solving the constrained sparse Poisson inverse problem. In particular, the proposed approach incorporates key ideas of using quadratic separable approximations to the objective function at each iteration and computationally efficient partition-based multiscale estimation methods.
Keywords :
Poisson distribution; inverse problems; optimisation; signal processing; Poisson noise model; inverse problem; multiscale estimation; negative Poisson log-likelihood objective function; optimization; quadratic separable approximations; sparse approximation; spatially distributed phenomenon; temporally distributed phenomenon; Additive noise; Astronomy; Compressed sensing; Extraterrestrial measurements; Gaussian noise; Image reconstruction; Inverse problems; Noise level; Reconstruction algorithms; Vehicle detection; Photon-limited imaging; Poisson noise; compressed sensing; convex optimization; sparse approximation; wavelets;
Conference_Titel :
Statistical Signal Processing, 2009. SSP '09. IEEE/SP 15th Workshop on
Conference_Location :
Cardiff
Print_ISBN :
978-1-4244-2709-3
Electronic_ISBN :
978-1-4244-2711-6
DOI :
10.1109/SSP.2009.5278495