Title :
This is SPIRAL-TAP: Sparse Poisson Intensity Reconstruction ALgorithms—Theory and Practice
Author :
Harmany, Zachary T. ; Marcia, Roummel F. ; Willett, Rebecca M.
Author_Institution :
Dept. of Electr. & Comput. Eng., Duke Univ., Durham, NC, USA
fDate :
3/1/2012 12:00:00 AM
Abstract :
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 effectively accomplished by minimizing a conventional penalized least-squares objective function. The problem addressed in this paper is the estimation of f* from y in an inverse problem setting, where the number of unknowns may potentially be larger than the number of observations and f* admits sparse approximation. The optimization formulation considered in this paper uses a penalized negative Poisson log-likelihood objective function with nonnegativity constraints (since Poisson intensities are naturally nonnegative). In particular, the proposed approach incorporates key ideas of using separable quadratic approximations to the objective function at each iteration and penalization terms related to l1 norms of coefficient vectors, total variation seminorms, and partition-based multiscale estimation methods.
Keywords :
Gaussian noise; approximation theory; image reconstruction; iterative methods; least squares approximations; quadratic programming; stochastic processes; Gaussian noise model; Poisson data; Poisson noise model; SPIRAL-TAP; coefficient vector; inverse problem; iteration function; nonnegativity constraint; optimization formulation; partition-based multiscale estimation method; penalized least square objective function; penalized negative Poisson log-likelihood objective function; quadratic approximation; sparse Poisson intensity reconstruction algorithm; sparse approximation; spatially distributed phenomenon; temporally distributed phenomenon; total variation seminorm; Approximation methods; Convergence; Estimation; Image reconstruction; Inverse problems; Minimization; TV; Compressed sensing (CS); Poisson noise; convex optimization; multiscale; photon-limited imaging; sparse approximation; total variation (TV); wavelets;
Journal_Title :
Image Processing, IEEE Transactions on
DOI :
10.1109/TIP.2011.2168410