DocumentCode :
2946151
Title :
Dense visual-inertial navigation system for mobile robots
Author :
Omari, Sammy ; Bloesch, Michael ; Gohl, Pascal ; Siegwart, Roland
Author_Institution :
Autonomous Syst. Lab., ETH Zurich, Zurich, Switzerland
fYear :
2015
fDate :
26-30 May 2015
Firstpage :
2634
Lastpage :
2640
Abstract :
Real-time dense mapping and pose estimation is essential for a wide range of navigation tasks in mobile robotic applications. We propose an odometry and mapping system that leverages the full photometric information from a stereo-vision system as well as inertial measurements in a probabilistic framework while running in real-time on a single low-power Intel CPU core. Instead of performing mapping and localization on a set of sparse image features, we use the complete dense image intensity information in our navigation system. By incorporating a probabilistic model of the stereo sensor and the IMU, we can robustly estimate the ego-motion as well as a dense 3D model of the environment in real-time. The probabilistic formulation of the joint odometry estimation and mapping process enables to efficiently reject temporal outliers in ego-motion estimation as well as spatial outliers in the mapping process. To underline the versatility of the proposed navigation system, we evaluate it in a set of experiments on a multi-rotor system as well as on a quadrupedal walking robot. We tightly integrate our framework into the stabilization-loop of the UAV and the mapping framework of the walking robot. It is shown that the dense framework exhibits good tracking and mapping performance in terms of accuracy as well as robustness in scenarios with highly dynamic motion patterns while retaining a relatively small computational footprint. This makes it an ideal candidate for control and navigation tasks in unstructured GPS-denied environments, for a wide range of robotic platforms with power and weight constraints. The proposed framework is released as an open-source ROS package.
Keywords :
inertial navigation; mobile robots; pose estimation; probability; real-time systems; robot vision; stability; stereo image processing; visual perception; 3D model; IMU; complete dense image intensity information; dense visual-inertial navigation system; dynamic motion patterns; ego-motion estimation; inertial measurements; joint odometry estimation; mobile robotic applications; multirotor system; open-source ROS package; photometric information; pose estimation; power constraints; probabilistic framework; quadrupedal walking robot; real-time dense mapping; relatively small computational footprint; single low-power Intel CPU core; sparse image features; spatial outliers; stabilization-loop; stereo sensor; stereo-vision system; unstructured GPS-denied environments; walking robot; weight constraints; Cameras; Estimation; Jacobian matrices; Legged locomotion; Navigation; Three-dimensional displays;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Robotics and Automation (ICRA), 2015 IEEE International Conference on
Conference_Location :
Seattle, WA
Type :
conf
DOI :
10.1109/ICRA.2015.7139554
Filename :
7139554
Link To Document :
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