Presentation
14 May 2019 Learning models for acquisition planning of CT projections (Conference Presentation)
Yangyang Sun, Zheyuan Zhu, Shuo Pang
Author Affiliations +
Abstract
Task-specific adaptive sensing in computed tomography (CT) scan is critical to dose reduction and scanning acceleration. Due to the sequential nature of the CT acquisition process, the information of the objects aggregates as the measurement process progresses. Conventional adaptive sensing methods, aiming to maximize the task-specific information acquisition, formulate the measurement strategy as an optimization problem with assumptions in object distributions (for example, Gaussian mixture model), which requires considerable computational time and resource during the acquisition. In our work, we propose a machine learning approach to learn task-specific data-acquisition policy, with the only assumption on the locality and composition of the objects, which shifts the computation load to the pre-acquisition stage. We analyze our learned method on public dataset comparing to a stochastic policy which plans the acquisition randomly and a uniform policy which plans the acquisition with a fixed interval. Based on our experiments the learned method requires at least 25% fewer acquisition steps than the stochastic and uniform policies.
Conference Presentation
© (2019) COPYRIGHT Society of Photo-Optical Instrumentation Engineers (SPIE). Downloading of the abstract is permitted for personal use only.
Yangyang Sun, Zheyuan Zhu, and Shuo Pang "Learning models for acquisition planning of CT projections (Conference Presentation)", Proc. SPIE 10999, Anomaly Detection and Imaging with X-Rays (ADIX) IV, 109990C (14 May 2019); https://doi.org/10.1117/12.2519008
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KEYWORDS
Computed tomography

Stochastic processes

Data processing

Machine learning

Optimization (mathematics)

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