Accurate and robust calibration is an essential prerequisite for multi-rate sensors fusion. However, most existing calibration methods ignore the temporal calibration and assumed the timestamps of the multi-rate sensors are precisely aligned; more importantly, many approaches are designed for offline calibration. For these reasons, this paper develops a novel online temporal calibration method for multi-rate sensors fusion based on the motion constrains of the sensors. In this new calibration framework, the high update rate inertial measurement unit (IMU) is utilized as the unified calibrating references, while other moderate or low-frequency target sensors can be estimated based on the reference IMU. As a result, the targetless, online, an...
The position and orientation estimation problem for mobile robots is approached by fusing measuremen...
The problem of estimating and predicting position and orientation (pose) of a camera is approached b...
Sensor fusion is concerned with gaining information from multiple sensors by fusing across raw data,...
2011-12-12The majority of future autonomous robots will be mobile, and will need to navigate reliabl...
Abstract: Spatial tracking is one of the most challenging and important parts of mixed reality envir...
The ability to maintain and continuously update geometric calibration parameters of a mobile platfor...
Wearable systems for human motion capture based on low cost MEMS magnetic-inertial measurement units...
Robust and accurate pose estimation of moving systems is a challenging task that is often tackled by...
In recent decades, there has been rapid development of multi-sensor data fusion because of its versa...
This thesis develops an automatic spatiotemporal calibration routine for lidars and egomotion sensor...
International audienceIn this paper we propose a new on-line sensor self-calibration framework. The ...
Many applications in robotics require awareness of the state of the robot and its environment. Face...
This article addresses the problems of online estimations of kinematic and dynamic states of a mecha...
Abstract — It has been long known that fusing information from multiple sensors for robot navigation...
Abstract — A framework for online simultaneous localization, mapping and self-calibration is present...
The position and orientation estimation problem for mobile robots is approached by fusing measuremen...
The problem of estimating and predicting position and orientation (pose) of a camera is approached b...
Sensor fusion is concerned with gaining information from multiple sensors by fusing across raw data,...
2011-12-12The majority of future autonomous robots will be mobile, and will need to navigate reliabl...
Abstract: Spatial tracking is one of the most challenging and important parts of mixed reality envir...
The ability to maintain and continuously update geometric calibration parameters of a mobile platfor...
Wearable systems for human motion capture based on low cost MEMS magnetic-inertial measurement units...
Robust and accurate pose estimation of moving systems is a challenging task that is often tackled by...
In recent decades, there has been rapid development of multi-sensor data fusion because of its versa...
This thesis develops an automatic spatiotemporal calibration routine for lidars and egomotion sensor...
International audienceIn this paper we propose a new on-line sensor self-calibration framework. The ...
Many applications in robotics require awareness of the state of the robot and its environment. Face...
This article addresses the problems of online estimations of kinematic and dynamic states of a mecha...
Abstract — It has been long known that fusing information from multiple sensors for robot navigation...
Abstract — A framework for online simultaneous localization, mapping and self-calibration is present...
The position and orientation estimation problem for mobile robots is approached by fusing measuremen...
The problem of estimating and predicting position and orientation (pose) of a camera is approached b...
Sensor fusion is concerned with gaining information from multiple sensors by fusing across raw data,...