Target Tracking Algorithm Based on Improved Probabilistic Data
Association
- Xiaojie Huang
, - Jiaguo Zhang
Abstract
When tracking a single maneuvering target in clutter environment, when
the number of effective measurements within the detection threshold is
small, it usually has a greater and more obvious impact on target
tracking results. If the observation data error is large at this time,
the tracking position and speed error will be larger. To solve this
problem, a target tracking algorithm based on improved probabilistic
data association is proposed in this paper. By dynamically adjusting the
detection threshold, the effective quantity within the detection
threshold of each frame is basically stable. Simulation results show
that the improved algorithm is more accurate in location and speed than
the traditional probabilistic data association method, and the
availability and effectiveness of the algorithm are verified.