Efficient Pairwise Neuroimage Analysis using the Soft Jaccard Index and 3D Keypoint Sets
Laurent Chauvin, Kuldeep Kumar, Christian Desrosiers, William Wells, III, Matthew Toews

TL;DR
This paper introduces a new soft Jaccard-based distance measure for 3D keypoint sets in medical images, enabling efficient large-scale indexing and family relationship prediction with high accuracy.
Contribution
It presents a novel adaptive kernel framework for soft set equivalence and geometry, improving image comparison and family relationship prediction in medical imaging.
Findings
Monozygotic twin identification near 100% accuracy
First practical application of image-based family identification
Sex prediction with AUC=0.97
Abstract
We propose a novel pairwise distance measure between image keypoint sets, for the purpose of large-scale medical image indexing. Our measure generalizes the Jaccard index to account for soft set equivalence (SSE) between keypoint elements, via an adaptive kernel framework modeling uncertainty in keypoint appearance and geometry. A new kernel is proposed to quantify the variability of keypoint geometry in location and scale. Our distance measure may be estimated between image pairs in operations via keypoint indexing. Experiments report the first results for the task of predicting family relationships from medical images, using 1010 T1-weighted MRI brain volumes of 434 families including monozygotic and dizygotic twins, siblings and half-siblings sharing 100%-25% of their polymorphic genes. Soft set equivalence and the keypoint geometry kernel improve upon standard…
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Taxonomy
TopicsRough Sets and Fuzzy Logic · Image Retrieval and Classification Techniques
