1. Vehicular Navigation Based on the Fusion of 3D-RISS and Machine Learning Enhanced Visual Data in Challenging Environments
- Author
-
Lianwu Guan, Menghao Wu, Yanbin Gao, Zhanyuan Chang, and Sun Yunlong
- Subjects
0209 industrial biotechnology ,Inertial frame of reference ,Computer Networks and Communications ,Computer science ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,lcsh:TK7800-8360 ,02 engineering and technology ,mlevd ,Machine learning ,computer.software_genre ,01 natural sciences ,Set (abstract data type) ,Extended Kalman filter ,020901 industrial engineering & automation ,Position (vector) ,Electrical and Electronic Engineering ,Inertial navigation system ,integrated vehicular navigation ,Landmark ,business.industry ,Template matching ,010401 analytical chemistry ,lcsh:Electronics ,Navigation system ,3d-riss ,0104 chemical sciences ,ekf ,Hardware and Architecture ,Control and Systems Engineering ,challenging environments ,Signal Processing ,Satellite ,Artificial intelligence ,business ,computer - Abstract
Based on the 3D Reduced Inertial Sensor System (3D-RISS) and the Machine Learning Enhanced Visual Data (MLEVD), an integrated vehicle navigation system is proposed in this paper. In demanding conditions such as outdoor satellite signal interference and indoor navigation, this work incorporates vehicle smooth navigation. Firstly, a landmark is set up and both of its size and position are accurately measured. Secondly, the image with the landmark information is captured quickly by using the machine learning. Thirdly, the template matching method and the Extended Kalman Filter (EKF) are then used to correct the errors of the Inertial Navigation System (INS), which employs the 3D-RISS to reduce the overall cost and ensuring the vehicular positioning accuracy simultaneously. Finally, both outdoor and indoor experiments are conducted to verify the performance of the 3D-RISS/MLEVD integrated navigation technology. Results reveal that the proposed method can effectively reduce the accumulated error of the INS with time while maintaining the positioning error within a few meters.
- Published
- 2020