From Event: SPIE Optical Engineering + Applications, 2017
This work seeks to develop an autonomous optimization of input computational resource parameters for arbitrary big-data computed tomography (CT) conﬁgurations. It is well known that graphics processing units (GPU) have been a boon to many high-performance applications, including CT. The reconstruction task has both colossal computational and data throughput requirements that easily tax high-end GPUs to their limit. For big-data industrial and research applications, the burden is exacerbated through the use of high pixel count detectors (≥ 16 megapixels) and the large number of projections needed to meet Nyquist sampling requirements, resulting in datasets up to terabytes in size. Previous work has shown that the GPU kernels can be optimized to eﬃciently handle big-data; however, as this work will show, some sensitivities exist with respect to the tunable input parameters that can exact an exaggerated toll on reconstruction performance. This work will investigate the input parameter space for various relevant and future-sized datasets and will present a calibration approach to optimize reconstruction performance for varying sized detectors, geometries, and graphics processing resources. This work has the potential to dramatically improve many non-destructive evaluation and inspection applications in industry, security, and research where reconstruction rate is the main bottleneck of the resource chain. Sandia National Laboratories is a multi-program laboratory managed and operated by Sandia Corporation, a wholly owned subsidiary of Lockheed Martin Corporation, for the U.S. Department of Energy’s National Nuclear Security Administration under contract DEAC04-94AL85000.
Celia J. Flicker and Edward S. Jimenez, "Optimization of input parameters to improve big-data computed tomography reconstruction performance (Conference Presentation)," Proc. SPIE 10393, Radiation Detectors in Medicine, Industry, and National Security XVIII, 103930I (Presented at SPIE Optical Engineering + Applications: August 10, 2017; Published: 25 September 2017); https://doi.org/10.1117/12.2275851.5588485936001.
Conference Presentations are recordings of oral presentations given at SPIE conferences and published as part of the conference proceedings. They include the speaker's narration along with a video recording of the presentation slides and animations. Many conference presentations also include full-text papers. Search and browse our growing collection of more than 14,000 conference presentations, including many plenary and keynote presentations.
Study of self-shadowing effect as a simple means to realize nanostructured thin films and layers with special attentions to birefringent obliquely deposited thin films and photo-luminescent porous silicon