Paul_How_To_Make_Your_Cell_Tracker_Say_I_dunno@ICCV2025@CVF

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#1 How To Make Your Cell Tracker Say "I dunno!" [PDF] [Copy] [Kimi] [REL]

Authors: Richard D. Paul, Johannes Seiffarth, David Rügamer, Katharina Nöh, Hanno Scharr

Cell tracking is a key computational task in live-cell microscopy, but fully automated analysis of high-throughput imaging requires reliable and, thus, uncertainty-aware data analysis tools, as the amount of data recorded within a single experiment exceeds what humans are able to overlook. We here propose and benchmark various methods to reason about and quantify uncertainty in linear assignment-based cell tracking algorithms. Our methods take inspiration from statistics and machine learning, leveraging two perspectives on the cell tracking problem explored throughout this work: Considering it as a Bayesian inference problem and as a classification problem. Our methods admit a framework-like character in that they equip any frame-to-frame tracking method with uncertainty quantification. We demonstrate this by applying it to various existing tracking algorithms including the recently presented Transformer-based trackers. We demonstrate empirically that our methods yield useful and well-calibrated tracking uncertainties.

Subject: ICCV.2025 - Poster