X-ray computed tomography (XCT) is an important tool for high-resolution
non-destructive characterization of additively-manufactured metal components.
XCT reconstructions of metal components may have beam hardening artifacts such
as cupping and streaking which makes reliable detection of flaws and defects
challenging. Furthermore, traditional workflows based on using analytic
reconstruction algorithms require a large number of projections for accurate
characterization - leading to longer measurement times and hindering the
adoption of XCT for in-line inspections. In this paper, we introduce a new
workflow based on the use of two neural networks to obtain high-quality
accelerated reconstructions from sparse-view XCT scans of single material metal
parts. The first network, implemented using fully-connected layers, helps
reduce the impact of BH in the projection data without the need of any
calibration or knowledge of the component material. The second network, a
convolutional neural network, maps a low-quality analytic 3D reconstruction to
a high-quality reconstruction. Using experimental data, we demonstrate that our
method robustly generalizes across several alloys, and for a range of sparsity
levels without any need for retraining the networks thereby enabling accurate
and fast industrial XCT inspections