A Complete Variational Tracker
Turner, Ryan D., Bottone, Steven, Avasarala, Bhargav
–Neural Information Processing Systems
We introduce a novel probabilistic tracking algorithm that incorporates combinatorial data association constraints and model-based track management using variational Bayes. We use a Bethe entropy approximation to incorporate data association constraints that are often ignored in previous probabilistic tracking algorithms. We demonstrate the applicability of our method on radar tracking and computer vision problems. The field of tracking is broad and possesses many applications, particularly in radar/sonar [1], robotics [14], and computer vision [3]. Consider the following problem: A radar is tracking a flying object, referred to as atarget, using measurements of range, bearing, and elevation; it may also have Doppler measurements of radial velocity.
Neural Information Processing Systems
Dec-31-2014