Abstract

Given the payload limitation of unmanned aerial vehicles (UAVs), lightweight sensors such as camera, inertial measurement unit (IMU), and GPS, are ideal onboard measurement devices. By fusing multiple sensors, accurate state estimations can be achieved. Robustness against sensor faults is also possible because of redundancy. However, scale estimation of visual systems (visual odometry or visual inertial odometry, VO/VIO) suffers from sensor noise and special-case movements such as uniform linear motion. Thus, in this paper, a scale insensitive multi-sensor fusion (SIMSF) framework based on graph optimization is proposed. This framework combines the local estimation of the VO/VIO and global sensors to infer the accurate global state estimation of UAVs in real time. A similarity transformation between the local frame of the VO/VIO and the global frame is estimated by optimizing the poses of the most recent UAV states. In particular, for VO, an initial scale is estimated by aligning the VO with the IMU and GPS measurements. Moreover, a fault detection method for VO/VIO is also proposed to enhance the robustness of the fusion framework. The proposed methods are tested on a UAV platform and evaluated in several challenging environments. A comparison between our results and the results from other state-of-the-art algorithms demonstrate the superior accuracy, robustness, and real-time performance of our system. Our work is also a general fusion framework, which can be extended to other platforms as well.

Highlights

  • Unmanned aerial vehicles (UAVs) have been widely applied in military and civilian fields

  • A scale insensitive multi-sensor fusion framework for UAV based on graph optimization is proposed, which can process multiple sensor measurements including GPS, inertial measurement unit (IMU), visual odometry (VO)/visual inertial odometry (VIO), barometer and magnetometer

  • The first one is when the input is of an unknown type

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Summary

INTRODUCTION

Unmanned aerial vehicles (UAVs) have been widely applied in military and civilian fields. This method can fuse local visual information with data from global sensors, but it needs an accurate initial transformation between local and global coordinates and it assumes that the transformation will not drift Another method is the optimization-based fusion method [17]–[22], which optimizes a sliding window pose graph consisting of current and previous states. A scale insensitive multi-sensor fusion framework for UAV based on graph optimization is proposed, which can process multiple sensor measurements including GPS, IMU, VO/VIO, barometer and magnetometer. A scale insensitive multi-sensor fusion (SIMSF) framework based on graph optimization that can achieve locally accurate and globally drift-free state estimations. Experimental validation and evaluation of the proposed methods that demonstrate the improvement in accuracy, robustness, and real-time measurements compared to other state-of-the-art multi-sensor fusion systems

RELATED WORK
SCALE INSENSITIVE INITIALIZATION
SCALE INSENSITIVE POSE GRAPH OPTIMIZATION
EXPERIMENTAL RESULTS
EXPERIMENTAL SETUP
CONCLUSIONS
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