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Self-calibration of inertial and omnidirectional visual sensors for navigation and mapping.
| Content Provider | CiteSeerX |
|---|---|
| Author | Kelly, Jonathan Sukhatme, Gaurav S. |
| Abstract | Abstract — Omnidirectional cameras are versatile sensors that are able to provide a full 360-degree view of the environment. When combined with inertial sensing, omnidirectional vision offers a potentially robust navigation solution. However, to correctly fuse the data from an omnidirectional camera and an inertial measurement unit (IMU) into a single navigation frame, the 6-DOF transform between the sensors must be accurately known. In this paper we describe an algorithm, based on the unscented Kalman filter, for self-calibration of the transform between an omnidirectional camera and an IMU. We show that the IMU biases, the local gravity vector, and the metric scene structure can also be recovered from camera and IMU measurements. Further, our approach does not require any additional hardware or prior knowledge about the environment in which a robot is operating. We present results from calibration experiments with an omnidirectional camera and a low-cost IMU, which demonstrate accurate selfcalibration of the 6-DOF sensor-to-sensor transform. I. |
| File Format | |
| Access Restriction | Open |
| Subject Keyword | Omnidirectional Camera Omnidirectional Visual Sensor Full 360-degree View Calibration Experiment Inertial Measurement Unit 6-dof Sensor-to-sensor Transform 6-dof Transform Imu Bias Additional Hardware Versatile Sensor Robust Navigation Solution Accurate Selfcalibration Metric Scene Structure Prior Knowledge Single Navigation Frame Unscented Kalman Filter Low-cost Imu Present Result Omnidirectional Vision Abstract Omnidirectional Camera Local Gravity Vector Imu Measurement Inertial Sensing |
| Content Type | Text |
| Resource Type | Article |