Toward Comprehensive Industrial Computed Tomography Image Quality Assessment: I. Phantom Design

Xin Li,Aaron Dentinger, Michelle Brault, William R. Ross,Mark Osterlitz,Lin Fu,Mingye Wu, J. Scott Price,Bruno De Man,Clifford Bueno,Paul Fitzgerald

Journal of Nondestructive Evaluation, Diagnostics and Prognostics of Engineering Systems(2020)

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摘要
Abstract When comparing the performance of different industrial X-ray computed tomography (CT) systems, reconstruction algorithms, or scan protocols, it is important to assess how well the required inspection and measurement tasks can be performed. Furthermore, it can be very informative to quantify image quality (IQ) metrics that can provide insight into the IQ characteristics that lead to the resulting inspection or measurement task performance. Inspection and measurement task performance is determined by basic characteristics such as spatial resolution; feature contrast, size, and shape; random noise (noise due to statistical uncertainty in measurements); and image artifacts. In this report, we describe a modular phantom set that enables robustly quantifying these characteristics and also enables assessing the performance of the inspection or measurement tasks themselves. The phantom set includes two phantom bodies and several insert types that can be optionally installed in the bodies. Phantom body extensions can be optionally included to increase scatter. The phantom bodies combined with the available insert types can comprehensively evaluate all important IQ metrics and inspection or measurement tasks. The precisely-known phantom body geometry and insert location, geometry, and orientation supports automatic analysis of large, complex experiments of multiple variables. This phantom set, with the associated image analysis software, could potentially serve as a general evaluation method for non-destructive testing (NDT) CT.
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关键词
modular phantom, insert, image quality, inspection and measurement, industrial X-ray CT, imaging, X-ray
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