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ProbIN: Probabilistic inertial navigation

机译:概率论:概率惯性导航

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Numerous applications require accurate personal navigation for environments where neither GPS signals nor infrastructure beacons, such as WiFi, are available. Inertial navigation using low-cost sensors suffers from the noisy readings which leads to drifting errors over time. In this paper, we introduce a novel inertial navigation approach ProbIN using Bayesian probabilistic framework. ProbIN models the inertial navigation problem as a noise channel problem where we want to recover the actual motion/displacement of the user from the noisy sensor readings. Building on the top of dead reckoning, ProbIN learns a statistical model to map the noisy sensor readings to user's displacements instead of using the double integral of the acceleration. ProbIN also builds a statistical model to estimate the a priori probability of a user's trajectory pattern. Combining the mapping model and the trajectory model in a Bayesian framework, ProbIN searches for a trajectory that has the highest probability given the sensor input. Our experiments show that ProbIN significantly reduces the error of inertial navigation using low-cost MEMS sensors in mobile phones.
机译:对于无法使用GPS信号或基础设施信标(例如WiFi)的环境,许多应用程序需要精确的个人导航。使用低成本传感器的惯性导航会受到噪声读数的影响,该噪声会导致随时间的漂移误差。在本文中,我们介绍了一种使用贝叶斯概率框架的新型惯性导航方法ProbIN。 ProbIN将惯性导航问题建模为噪声通道问题,我们要从噪声传感器的读数中恢复用户的实际运动/位移。 ProbIN以航位推算为基础,学习一种统计模型,以将嘈杂的传感器读数映射到用户的位移,而不是使用加速度的双积分。 ProbIN还建立了一个统计模型来估计用户轨迹模式的先验概率。在贝叶斯框架中结合映射模型和轨迹模型,ProbIN搜索在给定传感器输入的情况下具有最高概率的轨迹。我们的实验表明,ProbIN可在手机中使用低成本MEMS传感器显着减少惯性导航的误差。

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