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Sparsity-regularized photon-limited imaging

机译:稀疏正则化光子受限成像

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摘要

In many medical imaging applications (e.g., SPECT, PET), the data are a count of the number of photons incident on a detector array. When the number of photons is small, the measurement process is best modeled with a Poisson distribution. The problem addressed in this paper is the estimation of an underlying intensity from photon-limited projections where the intensity admits a sparse or low-complexity representation. This approach is based on recent inroads in sparse reconstruction methods inspired by compressed sensing. However, unlike most recent advances in this area, the optimization formulation we explore uses a penalized negative Poisson loglikelihood objective function with nonnegativity constraints (since Poisson intensities are naturally nonnegative). This paper describes computational methods for solving the nonnegatively constrained sparse Poisson inverse problem. In particular, the proposed approach incorporates sequential separable quadratic approximations to the log-likelihood and computationally efficient partition-based multiscale estimation methods.
机译:在许多医学成像应用中(例如,SPECT,PET),数据是入射在检测器阵列上的光子数量的计数。当光子数较少时,最好用泊松分布对测量过程进行建模。本文解决的问题是根据光子限制的投影估算基本强度,其中强度允许稀疏或低复杂度表示。此方法基于受压缩传感启发的稀疏重建方法的最新进展。但是,与该领域的最新进展不同,我们探索的优化公式使用具有非负约束的惩罚性负Poisson对数似然目标函数(因为Poisson强度自然是非负的)。本文介绍了求解非负约束的稀疏泊松逆问题的计算方法。特别地,所提出的方法将对数似然和顺序有效的基于分区的多尺度估计方法结合了顺序可分离的二次逼近。

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