PERCEPTION
Self-localization for a Mobile Vehicle Using an Initial State Observer
Muneaki Higuchi, Hisakazu Nakamura, Hirokazu Nishitani
- 发表年份
- 2007
- 引用次数
- 2
- 访问权限
- 开放获取
摘要
Dead-reckoning and star-reckoning are two basic self-localization methods for vehicles, but each method has inherent weaknesses. Sensor-fusion via an extended Kalman filter is a suitable method to compensate these weaknesses. However, the extended Kalman filter requires the stochastics of measurement errors for implementation. In this paper, we propose a new sensor fusion method by using an initial state observer. We confirm the effectiveness and usefulness of our method by computer simulation and experiments for self localization of a two-wheeled mobile robot.
关键词
Kalman filterSensor fusionDead reckoningMobile robotComputer scienceObserver (physics)Computer visionStrengths and weaknessesFusionArtificial intelligence
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