Self-supervised learning for interventional image analytics: toward robust device trackers.
Saahil IslamVenkatesh N MurthyDominik NeumannBadhan Kumar DasPuneet SharmaAndreas K MaierDorin ComaniciuFlorin C GhesuPublished in: Journal of medical imaging (Bellingham, Wash.) (2024)
The proposed data-driven approach achieves superior performance, particularly in robustness and speed compared with the frequently used multi-modular approaches for device tracking. The results encourage the use of our approach in various other tasks within interventional image analytics that require effective understanding of spatio-temporal semantics.