NACVJan 29, 2016

Spectrally Grouped Total Variation Reconstruction for Scatter Imaging Using ADMM

arXiv:1601.08201v110 citations
Originality Incremental advance
AI Analysis

This work addresses material discrimination in scatter imaging, but it is incremental as it builds on existing edge-preserving regularizers by adding spectral grouping.

The paper tackled the problem of reconstructing momentum transfer profiles in X-ray coherent scatter imaging by proposing a spectrally grouped regularization method that improves both spectral and spatial image quality, demonstrating performance on real data.

We consider X-ray coherent scatter imaging, where the goal is to reconstruct momentum transfer profiles (spectral distributions) at each spatial location from multiplexed measurements of scatter. Each material is characterized by a unique momentum transfer profile (MTP) which can be used to discriminate between different materials. We propose an iterative image reconstruction algorithm based on a Poisson noise model that can account for photon-limited measurements as well as various second order statistics of the data. To improve image quality, previous approaches use edge-preserving regularizers to promote piecewise constancy of the image in the spatial domain while treating each spectral bin separately. Instead, we propose spectrally grouped regularization that promotes piecewise constant images along the spatial directions but also ensures that the MTPs of neighboring spatial bins are similar, if they contain the same material. We demonstrate that this group regularization results in improvement of both spectral and spatial image quality. We pursue an optimization transfer approach where convex decompositions are used to lift the problem such that all hyper-voxels can be updated in parallel and in closed-form. The group penalty introduces a challenge since it is not directly amendable to these decompositions. We use the alternating directions method of multipliers (ADMM) to replace the original problem with an equivalent sequence of sub-problems that are amendable to convex decompositions, leading to a highly parallel algorithm. We demonstrate the performance on real data.

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