Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

MARformer: An Efficient Metal Artifact Reduction Transformer for Dental CBCT Images

About

Cone Beam Computed Tomography (CBCT) plays a key role in dental diagnosis and surgery. However, the metal teeth implants could bring annoying metal artifacts during the CBCT imaging process, interfering diagnosis and downstream processing such as tooth segmentation. In this paper, we develop an efficient Transformer to perform metal artifacts reduction (MAR) from dental CBCT images. The proposed MAR Transformer (MARformer) reduces computation complexity in the multihead self-attention by a new Dimension-Reduced Self-Attention (DRSA) module, based on that the CBCT images have globally similar structure. A Patch-wise Perceptive Feed Forward Network (P2FFN) is also proposed to perceive local image information for fine-grained restoration. Experimental results on CBCT images with synthetic and real-world metal artifacts show that our MARformer is efficient and outperforms previous MAR methods and two restoration Transformers.

Yuxuan Shi, Jun Xu, Dinggang Shen• 2023

Related benchmarks

TaskDatasetResultRank
Metal Artifact RestorationSynDeepLesion Small size (test)
PSNR50.01
36
Metal Artifact RestorationSynDeepLesion Tiny size (test)
PSNR51.24
36
Metal Artifact RestorationCT Metal Artifact Removal (test)
Inference Time (s)0.0164
12
Metal Artifact RestorationSynDeepLesion Medium
PSNR47.15
12
Metal Artifact RestorationSynDeepLesion Medium (test)
PSNR47.74
12
Metal Artifact RestorationSynDeepLesion Large
PSNR43.73
12
Metal Artifact RestorationSynDeepLesion Large (test)
PSNR44.88
12
Metal Artifact ReductionCLINIC-metal (test)
Score3.68
11
Showing 8 of 8 rows

Other info

Follow for update