3D teeth reconstruction from X-ray is important for dental diagnosis and many clinical operations. However, no existing work has explored the reconstruction of teeth for a whole cavity from a single panoramic radiograph. Different from single object reconstruction from photos, this task has the unique challenge of constructing multiple objects at high resolutions. To conquer this task, we develop a novel ConvNet X2Teeth that decomposes the task into teeth localization and single-shape estimation. We also introduce a patch-based training strategy, such that X2Teeth can be end-to-end trained for optimal performance. Extensive experiments show that our method can successfully estimate the 3D structure of the cavity and reflect the details for each tooth. Moreover, X2Teeth achieves a reconstruction IoU of 0.681, which significantly outperforms the encoder-decoder method by $1.71X and the retrieval-based method by $1.52X. Our method can also be promising for other multi-anatomy 3D reconstruction tasks.
翻译:从X光中重建3D牙齿对牙科诊断和许多临床手术很重要。 但是,没有一项现有工作从单一的全光射线仪中探索重建整个牙洞的牙齿。 与从照片中进行单一对象重建不同, 这项任务具有在高分辨率下建造多个物体的独特挑战。 要克服这项任务, 我们开发了一部新型的ConvNet X2Teeth, 将任务分解成牙齿定位和单片估计。 我们还引入了基于补丁的培训战略, 使X2Teeth能够接受最佳性能培训的端到端。 广泛的实验表明, 我们的方法可以成功地估计三D的腔结构, 并反映每颗牙齿的细节。 此外, X2Teeth实现了0. 681的重建IoU, 大大超过1.71X的编码解码法和1.52X的检索法。 我们的方法还可以为其他多向3D重建任务带来希望。