AI Article Synopsis

  • Accurate teeth delineation in 3-D dental models is crucial for personalized orthodontic treatment, with recent advancements in AI models like PointNet enhancing this process.
  • Multistream architectures can improve segmentation by learning geometric representations from various inputs, but traditional methods may struggle with effectively combining these diverse features.
  • The article introduces a hierarchical cross-stream aggregation (HiCA) network that boosts segmentation accuracy by using advanced aggregation techniques to better integrate multiple 3-D views of dental models, outperforming existing methods in tests with real patient data.

Article Abstract

Accurate teeth delineation on 3-D dental models is essential for individualized orthodontic treatment planning. Pioneering works like PointNet suggest a promising direction to conduct efficient and accurate 3-D dental model analyses in end-to-end learnable fashions. Recent studies further imply that multistream architectures to concurrently learn geometric representations from different inputs/views (e.g., coordinates and normals) are beneficial for segmenting teeth with varying conditions. However, such multistream networks typically adopt simple late-fusion strategies to combine features captured from raw inputs that encode complementary but fundamentally different geometric information, potentially hampering their accuracy in end-to-end semantic segmentation. This article presents a hierarchical cross-stream aggregation (HiCA) network to learn more discriminative point/cell-wise representations from multiview inputs for fine-grained 3-D semantic segmentation. Specifically, based upon our multistream backbone with input-tailored feature extractors, we first design a contextual cross-steam aggregation (CA) module conditioned on interstream consistency to boost each view's contextual representation learning jointly. Then, before the late fusion of different streams' outputs for segmentation, we further deploy a discriminative cross-stream aggregation (DA) module to concurrently update all views' discriminative representation learning by leveraging a specific graph attention strategy induced by multiview prototype learning. On both public and in-house datasets of real-patient dental models, our method significantly outperformed state-of-the-art (SOTA) deep learning methods for teeth semantic segmentation. In addition, extended experimental results suggest the applicability of HiCA to other general 3-D shape segmentation tasks. The code is available at https://github.com/ladderlab-xjtu/HiCA.

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Source
http://dx.doi.org/10.1109/TNNLS.2024.3404276DOI Listing

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