Learning Deep Features for Shape Correspondence with Domain Invariance
Praful Agrawal, Ross T. Whitaker, Shireen Y. Elhabian

TL;DR
This paper introduces a deep learning-based method to automatically extract features for shape correspondence in medical imaging, improving accuracy and domain adaptability over manual features.
Contribution
It proposes a novel deep convolutional neural network approach with unsupervised domain adaptation for automated, correspondence-friendly feature learning in complex anatomical shapes.
Findings
Deep features outperform manual features in correspondence accuracy.
Unsupervised domain adaptation effectively generalizes features to new anatomies.
Supervised learning improves feature quality for shape correspondence.
Abstract
Correspondence-based shape models are key to various medical imaging applications that rely on a statistical analysis of anatomies. Such shape models are expected to represent consistent anatomical features across the population for population-specific shape statistics. Early approaches for correspondence placement rely on nearest neighbor search for simpler anatomies. Coordinate transformations for shape correspondence hold promise to address the increasing anatomical complexities. Nonetheless, due to the inherent shape-level geometric complexity and population-level shape variation, the coordinate-wise correspondence often does not translate to the anatomical correspondence. An alternative, group-wise approach for correspondence placement explicitly models the trade-off between geometric description and the population's statistical compactness. However, these models achieve limited…
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Taxonomy
TopicsMedical Imaging and Analysis · Dental Radiography and Imaging · Hip disorders and treatments
