Signal Processing and Localization

冗余信息

2016-12-18  本文已影响8人  wuzhiguo

摘自 Dr. Bernhard Hofmann-Wellenhof, Dr. Klaus Legat, Dr. Manfred Wieser (auth.)-Navigation_ Principles of Positioning and Guidance-Springer-Verlag Wien (2003)

Types of redundancy

An essential feature of sensor fusion is the presence of redundant information, i.e., more information than required to solve a defined task is availableabout a given process. After Beyer and Wigger (2001: Sect. 2.4.5), four types:

Updating process

The multisensor technique requires appropriate methods of updating the navigation solution by redundant information. Several methods may solve this task:
Signal blending (averaging) is usually applied in case of parallel redundancy. When using several sensors of different quality, weighted averaging is applied. Signal blending does not take into account a dynamic model.
Filtering tries to achieve a more realistic processing of the signals by involving a dynamic model of the motion. In case of conventional filtering, stationary stochastic covariance models are used for the updating process.
Optimal filtering employs time-variant stochastic covariance modelsand is achieved by Kalman filtering which is commonly applied for updating the state vector gained by multisensor navigation systems.

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