Gaussian mixture-sound field landmark model for robot localization
Li Wei Wu, Chieh-Cheng Cheng, Wei‐Han Liu, Jwu‐Sheng Hu
- 发表年份
- 2006
- 引用次数
- 4
摘要
This investigation proposes a robust robot localization system. The system contains a novel Gaussian mixture-sound field landmark model (GM-SFLM) and can localize the robot accurately in noisy environments. Moreover, the proposed method depends nothing on the geometry relation between source locations and two microphones; it is able to cover both near-field and far-field problems. With this proposed GM-SFLM, we can localize robot in 2-dimensional indoor environments. Furthermore, we realize the GM-SFLM into a quadruped robot system composed of an eRobot and a robot agent by using embedded Ethernet technology. The experiment demonstrates that when the robot is completely non-line-of-sight, this system still provides high detection accuracy. Additionally, the proposed method has advantages of high accuracy, low-cost, easy to implement and environmental adaptation.
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