TractoRC: A Unified Probabilistic Learning Framework for Joint Tractography Registration and Clustering
arXiv cs.CV / 3/12/2026
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Key Points
- TractoRC jointly performs tractogram registration and streamline clustering in a single optimization, enabling the two tasks to leverage complementary information.
- It learns a latent embedding space for streamline points that serves as a shared representation for both registration and clustering.
- Within this space, registration is formulated as probabilistic inference over anatomical landmarks (probabilistic keypoints) to align tractograms across subjects, while clustering learns streamline prototypes that capture geometric similarity.
- A transformation-equivariant self-supervised strategy is introduced to learn geometry-aware and transformation-invariant embeddings.
- Experiments show that joint optimization improves performance over state-of-the-art methods that treat registration and clustering independently, and the code will be released publicly at the provided GitHub link.
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