English

Incorporating Data Uncertainty in Object Tracking Algorithms

Systems and Control 2021-11-04 v2 Computer Vision and Pattern Recognition Systems and Control

Abstract

Methodologies for incorporating the uncertainties characteristic of data-driven object detectors into object tracking algorithms are explored. Object tracking methods rely on measurement error models, typically in the form of measurement noise, false positive rates, and missed detection rates. Each of these quantities, in general, can be dependent on object or measurement location. However, for detections generated from neural-network processed camera inputs, these measurement error statistics are not sufficient to represent the primary source of errors, namely a dissimilarity between run-time sensor input and the training data upon which the detector was trained. To this end, we investigate incorporating data uncertainty into object tracking methods such as to improve the ability to track objects, and particularly those which out-of-distribution w.r.t. training data. The proposed methodologies are validated on an object tracking benchmark as well on experiments with a real autonomous aircraft.

Keywords

Cite

@article{arxiv.2109.10521,
  title  = {Incorporating Data Uncertainty in Object Tracking Algorithms},
  author = {Anish Muthali and Forrest Laine and Claire Tomlin},
  journal= {arXiv preprint arXiv:2109.10521},
  year   = {2021}
}

Comments

For associated video, see https://youtu.be/S21EvaAynRg

R2 v1 2026-06-24T06:12:19.167Z