RealDRR – Rendering of realistic digitally reconstructed radiographs using locally trained image-to-image translation

Volume: 153, Pages: 213 - 219
Published: Dec 1, 2020
Abstract
Introduction Digitally reconstructed radiographs (DRRs) represent valuable patient-specific pre-treatment training data for tumor tracking algorithms. However, using current rendering methods, the similarity of the DRRs to real X-ray images is limited, requires time-consuming measurements and/or are computationally expensive. In this study we present RealDRR, a novel framework for highly realistic and computationally efficient DRR rendering....
Paper Details
Title
RealDRR – Rendering of realistic digitally reconstructed radiographs using locally trained image-to-image translation
Published Date
Dec 1, 2020
Volume
153
Pages
213 - 219
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