A-MFST: Adaptive Multi-Flow Sparse Tracker for Real-Time Tissue Tracking Under Occlusion
Yuxin Chen, Zijian Wu, Adam Schmidt, and Septimiu E. Salcudean

TL;DR
This paper introduces A-MFST, an adaptive multi-flow sparse tracker that, combined with SAM2, significantly improves real-time tissue tracking accuracy under occlusion in robot-assisted surgery without sacrificing speed.
Contribution
It extends the SENDD model with occlusion detection and multi-flow tracking, achieving better accuracy and robustness in tissue tracking during occlusions.
Findings
12% reduction in average tracking error (MEE)
6% improvement in accuracy over multiple thresholds
Enhanced robustness with real-time performance maintained
Abstract
Purpose: Tissue tracking is critical for downstream tasks in robot-assisted surgery. The Sparse Efficient Neural Depth and Deformation (SENDD) model has previously demonstrated accurate and real-time sparse point tracking, but struggled with occlusion handling. This work extends SENDD to enhance occlusion detection and tracking consistency while maintaining real-time performance. Methods: We use the Segment Anything Model2 (SAM2) to detect and mask occlusions by surgical tools, and we develop and integrate into SENDD an Adaptive Multi-Flow Sparse Tracker (A-MFST) with forward-backward consistency metrics, to enhance occlusion and uncertainty estimation. A-MFST is an unsupervised variant of the Multi-Flow Dense Tracker (MFT). Results: We evaluate our approach on the STIR dataset and demonstrate a significant improvement in tracking accuracy under occlusion, reducing average tracking…
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Taxonomy
TopicsSurgical Simulation and Training · Optical Imaging and Spectroscopy Techniques · Anatomy and Medical Technology
