Uncertainty Quantification of Discrete Association Problems in Image Sequence-based Tracking
Alexander Mont, Aubrey V. Wiegel, Diego Krapf, and Christopher P., Calderon

TL;DR
This paper presents an efficient method for quantifying uncertainty in discrete data association problems in image sequence tracking, especially for large-scale biological applications, without exhaustive enumeration of all solutions.
Contribution
The authors introduce a novel technique that accurately and efficiently quantifies association ambiguity without evaluating all feasible solutions, suitable for large-scale tracking problems.
Findings
Method accurately quantifies uncertainty in association solutions.
Applicable to large-scale 2D tracking problems with hundreds to thousands of particles.
Validated through simulations and live-cell experiments.
Abstract
Applications, ranging from tracking molecular motion within cells to analyzing complex animal foraging behavior, require algorithms for associating a collection of spot-like particles in one image with particles contained in another image. These associations are often made via network flow algorithms. However, it is often the case that many candidate association solutions (the output of network flow algorithms) have nearly optimal scores; in this case, the optimal assignment solution is of dubious quality. Algorithms for reliably computing the uncertainty of candidate association solutions are under-developed in situations where many particles are tracked over multiple frames of data. This is due in part to the fact that exact uncertainty quantification (UQ) in large association problems is computationally intractable because the exact computation exhibits exponential dependence on the…
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Taxonomy
TopicsTarget Tracking and Data Fusion in Sensor Networks · Machine Learning and Algorithms · Spectroscopy Techniques in Biomedical and Chemical Research
