Unscented Information Filtering with Interacting Multiple Model for Multiple Sensor Target Tracking
スポンサーリンク
概要
- 論文の詳細を見る
A new method that combines an unscented information filtering (UIF) algorithm with an interacting multiple model (IMM) framework under a distributed multiple-sensor fusion architecture is proposed. The objective of the proposed scheme is to track a maneuverable target whose dynamics can be modeled with multiple nonlinear models, and whose measurements are obtained from and processed at distributed systems. An IMM is not suited for information fusion architectures because it does not use combined estimates and covariance from a previous step to predict values at the next time step, which is essential for information filtering. The proposed algorithm fuses data, such as the information state contribution and information matrix, of each UIF that is included in an IMM filter. Moreover, the proposed algorithm improves the tracking performance when the mode likelihood functions in the IMM, which are important in flight mode detection and change, are shared among the distributed systems. The tracking results from simulations indicate that the present filtering method can be a good solution to tracking of a maneuvering target in multiple-sensor environments.
- THE JAPAN SOCIETY FOR AERONAUTICAL AND SPACE SCIENCESの論文
著者
-
BANG Hyochoong
Department of Aerospace Engineering, Korea Advanced Institute of Science and Technology
-
JEON Daekeun
CNS/ATM and Satellite Navigation Research Center, Korea Aerospace Research Institute
-
EUN Yeonju
CNS/ATM and Satellite Navigation Research Center, Korea Aerospace Research Institute
-
YEOM Chanhong
CNS/ATM and Satellite Navigation Research Center, Korea Aerospace Research Institute
関連論文
- A Modified Rodrigues Parameter-based Nonlinear Observer Design for Spacecraft Gyroscope Parameters Estimation
- Unscented Information Filtering with Interacting Multiple Model for Multiple Sensor Target Tracking
- Adaptive Nonlinear Control for a Reusable Space Vehicles Longitudinal Dynamics under Model Uncertainties
- Unscented Information Filtering with Interacting Multiple Model for Multiple Sensor Target Tracking