Scale Estimation And Refinement In Monocular Visual-Inertial Slam System

IMAGE AND GRAPHICS (ICIG 2017), PT I(2017)

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摘要
The fusion of monocular visual and inertial cues has become popular in robotics, unmanned vehicle and augmented reality fields. Recent results have shown that optimization-based fusion strategies outperform filtering ones. The visual-inertial ORB-SLAM is optimization-based and has achieved great success. However, it takes all measurements into IMU initialization, which contains outliers, and it lacks of termination criterion. In this paper, we aim to resolve these issues. First, we present an approach to estimate scale, gravity and accelerometer bias together, and regard the estimated gravity as an indication for estimation convergence. Second, we propose a methodology that is able to use weight w derived from the robust norm for outliers handling, so that the estimated scale can be refined. We test our approaches with the public EuRoC datasets. Experimental results show that the proposed methods can achieve good scale estimation and refinement.
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关键词
Visual-inertial fusion,Monocular SLAM,Scale estimation
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