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LVI-Fusion: A Robust Lidar-Visual-Inertial SLAM Scheme
by
Shao, Kefan
, Liu, Ao
, Wang, Chuanhao
, Liu, Zhenbin
, Guo, Qiang
, Li, Zengke
in
Accuracy
/ Algorithms
/ Automatic location systems
/ Cameras
/ Comparative analysis
/ Data acquisition
/ data collection
/ Environmental impact
/ equations
/ image analysis
/ Image processing
/ Image segmentation
/ IMU
/ Inertial measurement units
/ Lidar
/ Localization
/ Mapping
/ Methods
/ Modules
/ monocular camera
/ Motor vehicles
/ Multisensor fusion
/ Optical flow (image analysis)
/ Optical radar
/ Optimization
/ Robustness (mathematics)
/ sensor fusion
/ Sensors
/ Simultaneous localization and mapping
/ SLAM
/ Unmanned aerial vehicles
/ Visual aspects
2024
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LVI-Fusion: A Robust Lidar-Visual-Inertial SLAM Scheme
by
Shao, Kefan
, Liu, Ao
, Wang, Chuanhao
, Liu, Zhenbin
, Guo, Qiang
, Li, Zengke
in
Accuracy
/ Algorithms
/ Automatic location systems
/ Cameras
/ Comparative analysis
/ Data acquisition
/ data collection
/ Environmental impact
/ equations
/ image analysis
/ Image processing
/ Image segmentation
/ IMU
/ Inertial measurement units
/ Lidar
/ Localization
/ Mapping
/ Methods
/ Modules
/ monocular camera
/ Motor vehicles
/ Multisensor fusion
/ Optical flow (image analysis)
/ Optical radar
/ Optimization
/ Robustness (mathematics)
/ sensor fusion
/ Sensors
/ Simultaneous localization and mapping
/ SLAM
/ Unmanned aerial vehicles
/ Visual aspects
2024
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LVI-Fusion: A Robust Lidar-Visual-Inertial SLAM Scheme
by
Shao, Kefan
, Liu, Ao
, Wang, Chuanhao
, Liu, Zhenbin
, Guo, Qiang
, Li, Zengke
in
Accuracy
/ Algorithms
/ Automatic location systems
/ Cameras
/ Comparative analysis
/ Data acquisition
/ data collection
/ Environmental impact
/ equations
/ image analysis
/ Image processing
/ Image segmentation
/ IMU
/ Inertial measurement units
/ Lidar
/ Localization
/ Mapping
/ Methods
/ Modules
/ monocular camera
/ Motor vehicles
/ Multisensor fusion
/ Optical flow (image analysis)
/ Optical radar
/ Optimization
/ Robustness (mathematics)
/ sensor fusion
/ Sensors
/ Simultaneous localization and mapping
/ SLAM
/ Unmanned aerial vehicles
/ Visual aspects
2024
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Journal Article
LVI-Fusion: A Robust Lidar-Visual-Inertial SLAM Scheme
2024
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Overview
With the development of simultaneous positioning and mapping technology in the field of automatic driving, the current simultaneous localization and mapping scheme is no longer limited to a single sensor and is developing in the direction of multi-sensor fusion to enhance the robustness and accuracy. In this study, a localization and mapping scheme named LVI-fusion based on multi-sensor fusion of camera, lidar and IMU is proposed. Different sensors have different data acquisition frequencies. To solve the problem of time inconsistency in heterogeneous sensor data tight coupling, the time alignment module is used to align the time stamp between the lidar, camera and IMU. The image segmentation algorithm is used to segment the dynamic target of the image and extract the static key points. At the same time, the optical flow tracking based on the static key points are carried out and a robust feature point depth recovery model is proposed to realize the robust estimation of feature point depth. Finally, lidar constraint factor, IMU pre-integral constraint factor and visual constraint factor together construct the error equation that is processed with a sliding window-based optimization module. Experimental results show that the proposed algorithm has competitive accuracy and robustness.
Publisher
MDPI AG
Subject
/ Cameras
/ IMU
/ Lidar
/ Mapping
/ Methods
/ Modules
/ Optical flow (image analysis)
/ Sensors
/ Simultaneous localization and mapping
/ SLAM
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