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引用次数: 0

摘要

统计形状建模(SSM)是研究和量化解剖群体内部解剖变异的重要工具。然而,传统的基于对应关系的 SSM 生成方法推理过程繁琐,需要完整的几何代型(如高分辨率二元体积或表面网格)作为输入形状来构建 SSM。形状的无序三维点云表示更容易从各种医学成像实践(如阈值图像和表面扫描)中获取。最近,点云深度网络在为不同的点云任务(如补全、语义分割、分类)学习包络不变特征方面取得了显著的成功。然而,它们在从点云学习 SSM 方面的应用至今尚未得到探索。在这项工作中,我们证明了现有的基于点云编码器-解码器的补全网络可以为 SSM 提供尚未开发的潜力,在捕捉形状的群体级统计表示的同时,减轻推理负担并放宽输入要求。我们讨论了这些技术在 SSM 应用中的局限性,并提出了未来的改进建议。我们的工作为进一步探索用于 SSM 的点云深度学习铺平了道路,这是推进形状分析文献和将 SSM 扩展到各种使用案例的一条大有可为的途径。
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Can point cloud networks learn statistical shape models of anatomies?

Statistical Shape Modeling (SSM) is a valuable tool for investigating and quantifying anatomical variations within populations of anatomies. However, traditional correspondence-based SSM generation methods have a prohibitive inference process and require complete geometric proxies (e.g., high-resolution binary volumes or surface meshes) as input shapes to construct the SSM. Unordered 3D point cloud representations of shapes are more easily acquired from various medical imaging practices (e.g., thresholded images and surface scanning). Point cloud deep networks have recently achieved remarkable success in learning permutation-invariant features for different point cloud tasks (e.g., completion, semantic segmentation, classification). However, their application to learning SSM from point clouds is to-date unexplored. In this work, we demonstrate that existing point cloud encoder-decoder-based completion networks can provide an untapped potential for SSM, capturing population-level statistical representations of shapes while reducing the inference burden and relaxing the input requirement. We discuss the limitations of these techniques to the SSM application and suggest future improvements. Our work paves the way for further exploration of point cloud deep learning for SSM, a promising avenue for advancing shape analysis literature and broadening SSM to diverse use cases.

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