The Integrated Probabilistic Data Association Filter Adapted to Lie Groups
This work addresses target tracking in robotics or autonomous systems, but it is incremental as it adapts an existing filter to a specialized mathematical framework.
The paper tackled the problem of adapting the Integrated Probabilistic Data Association Filter (IPDAF) to target tracking on Lie groups, specifically applying it to track a ground vehicle on SE(2) with constant velocity models.
The Integrated Probabilistic Data Association Filter (IPDAF) is a target tracking algorithm based on the Probabilistic Data Association Filter that calculates a statistical measure that indicates if an estimated representation of the target properly represents the target or is generated from non-target-originated measurements. The main contribution of this paper is to adapt the IPDAF to constant velocity target models that evolve on connected, unimodular Lie groups, and where the measurements are also defined on a Lie group. We present an example where the methods developed in the paper are applied to the problem of tracking a ground vehicle on the special Euclidean group SE(2).