Cell Tracking according to Biological Needs -- Strong Mitosis-aware Multi-Hypothesis Tracker with Aleatoric Uncertainty
Cell tracking and segmentation assist biologists in extracting insights from large-scale microscopy time-lapse data. Driven by local accuracy metrics, current tracking approaches often suffer from a lack of long-term consistency and the ability to reconstruct lineage trees correctly. To address this...
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Zusammenfassung: | Cell tracking and segmentation assist biologists in extracting insights from
large-scale microscopy time-lapse data. Driven by local accuracy metrics,
current tracking approaches often suffer from a lack of long-term consistency
and the ability to reconstruct lineage trees correctly. To address this issue,
we introduce an uncertainty estimation technique for motion estimation
frameworks and extend the multi-hypothesis tracking framework. Our uncertainty
estimation lifts motion representations into probabilistic spatial densities
using problem-specific test-time augmentations. Moreover, we introduce a novel
mitosis-aware assignment problem formulation that allows multi-hypothesis
trackers to model cell splits and to resolve false associations and mitosis
detections based on long-term conflicts. In our framework, explicit biological
knowledge is modeled in assignment costs. We evaluate our approach on nine
competitive datasets and demonstrate that we outperform the current
state-of-the-art on biologically inspired metrics substantially, achieving
improvements by a factor of approximately 6 and uncover new insights into the
behavior of motion estimation uncertainty. |
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DOI: | 10.48550/arxiv.2403.15011 |