Simulation‐driven training of vision transformers enables metal artifact reduction of highly truncated CBCT scans
Fuxin Fan,
Ludwig Ritschl,
Marcel Beister
et al.
Abstract:BackgroundDue to the high attenuation of metals, severe artifacts occur in cone beam computed tomography (CBCT). The metal segmentation in CBCT projections usually serves as a prerequisite for metal artifact reduction (MAR) algorithms.PurposeThe occurrence of truncation caused by the limited detector size leads to the incomplete acquisition of metal masks from the threshold‐based method in CBCT volume. Therefore, segmenting metal directly in CBCT projections is pursued in this work.MethodsSince the generation … Show more
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