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Structure-Aware Sparse-View X-ray 3D Reconstruction

About

X-ray, known for its ability to reveal internal structures of objects, is expected to provide richer information for 3D reconstruction than visible light. Yet, existing neural radiance fields (NeRF) algorithms overlook this important nature of X-ray, leading to their limitations in capturing structural contents of imaged objects. In this paper, we propose a framework, Structure-Aware X-ray Neural Radiodensity Fields (SAX-NeRF), for sparse-view X-ray 3D reconstruction. Firstly, we design a Line Segment-based Transformer (Lineformer) as the backbone of SAX-NeRF. Linefomer captures internal structures of objects in 3D space by modeling the dependencies within each line segment of an X-ray. Secondly, we present a Masked Local-Global (MLG) ray sampling strategy to extract contextual and geometric information in 2D projection. Plus, we collect a larger-scale dataset X3D covering wider X-ray applications. Experiments on X3D show that SAX-NeRF surpasses previous NeRF-based methods by 12.56 and 2.49 dB on novel view synthesis and CT reconstruction. Code, models, and data are released at https://github.com/caiyuanhao1998/SAX-NeRF

Yuanhao Cai, Jiahao Wang, Alan Yuille, Zongwei Zhou, Angtian Wang• 2023

Related benchmarks

TaskDatasetResultRank
Static CT ReconstructionSynthetic (test)
PSNR31.93
24
Static CT Reconstructionreal (test)
PSNR35.07
24
Novel View SynthesisX3D Multiple scenes (Average reported)
PSNR59.88
21
CT ReconstructionAAPM L067
PSNR35.15
16
CT ReconstructionAAPM L096
PSNR37.79
16
CT ReconstructionBox
PSNR38.17
16
CT ReconstructionFoot
PSNR32.88
16
CT ReconstructionHead
PSNR39.4
16
CT ReconstructionJaw
PSNR36.15
16
CT ReconstructionX3D average of 14 scenes
PSNR37.25
9
Showing 10 of 11 rows

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