Pose Tracking with a Foundation Pose Model and an Ensemble Directional Kalman Filter

arXiv cs.LG / 5/6/2026

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Key Points

  • The paper proposes an ensemble directional Kalman filter (EnDKF) for pose tracking that jointly estimates position and attitude.
  • By using a unit-quaternion representation and techniques from directional statistics, EnDKF aims to better model uncertainty on orientations than standard Kalman filter assumptions.
  • Experiments on both a synthetic constant-velocity/constant-angular-velocity setup and a digital-twin head-tracking scenario (with FoundationPose) show substantial error reduction.
  • The results suggest that combining directional-aware filtering with pose foundation models can improve tracking performance beyond relying on raw measurements alone.

Abstract

This paper introduces the ensemble directional Kalman filter (EnDKF), an ensemble-based Kalman filtering approach for pose tracking that jointly estimates an object's position and attitude using ideas from directional statistics. The EnDKF integrates a unit-quaternion attitude representation to move beyond canonical Kalman filter mean and covariance assumptions that poorly capture directional uncertainty. Experiments on a synthetic constant-velocity constant-angular-velocity system and a digital-twin head-tracking scenario using the FoundationPose algorithm demonstrate a significant reduction in error as opposed to merely using measurements.