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Hand-Writing Motion Tracking with Vision-Inertial Sensor Fusion: Calibration and Error Correction

机译:具有视觉惯性传感器融合功能的手写运动跟踪:校准和纠错

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The purpose of this study was to improve the accuracy of real-time ego-motion tracking through inertial sensor and vision sensor fusion. Due to low sampling rates supported by web-based vision sensor and accumulation of errors in inertial sensors, ego-motion tracking with vision sensors is commonly afflicted by slow updating rates, while motion tracking with inertial sensor suffers from rapid deterioration in accuracy with time. This paper starts with a discussion of developed algorithms for calibrating two relative rotations of the system using only one reference image. Next, stochastic noises associated with the inertial sensor are identified using Allan Variance analysis, and modeled according to their characteristics. Finally, the proposed models are incorporated into an extended Kalman filter for inertial sensor and vision sensor fusion. Compared with results from conventional sensor fusion models, we have shown that ego-motion tracking can be greatly enhanced using the proposed error correction model.
机译:这项研究的目的是通过惯性传感器和视觉传感器融合来提高实时自我运动跟踪的准确性。由于基于Web的视觉传感器支持的低采样率以及惯性传感器中的错误积累,使用视觉传感器进行自我运动跟踪通常会受到更新速度缓慢的困扰,而使用惯性传感器进行运动跟踪会随着时间的推移而迅速降低精度。本文从对仅使用一个参考图像校准系统的两个相对旋转的已开发算法的讨论开始。接下来,使用Allan Variance分析确定与惯性传感器关联的随机噪声,并根据其特征进行建模。最后,提出的模型被合并到用于惯性传感器和视觉传感器融合的扩展卡尔曼滤波器中。与传统传感器融合模型的结果相比,我们已经表明,使用提出的纠错模型可以大大增强自我运动跟踪。

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