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首页> 外文期刊>IEEE transactions on mobile computing >Deep Neural Network Based Inertial Odometry Using Low-Cost Inertial Measurement Units
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Deep Neural Network Based Inertial Odometry Using Low-Cost Inertial Measurement Units

机译:基于深度神经网络的基于低成本惯性测量单元的惯性径流

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摘要

Inertial measurement units (IMUs) have emerged as an essential component in many of today's indoor navigation solutions due to their low cost and ease of use. However, despite many attempts for reducing the error growth of navigation systems based on commercial-grade inertial sensors, there is still no satisfactory solution that produces navigation estimates with long-time stability in widely differing conditions. This paper proposes to break the cycle of continuous integration used in traditional inertial algorithms, formulate it as an optimization problem, and explore the use of deep recurrent neural networks for estimating the displacement of a user over a specified time window. By training the deep neural network using inertial measurements and ground truth displacement data, it is possible to learn both motion characteristics and systematic error drift. As opposed to established context-aided inertial solutions, the proposed method is not dependent on either fixed sensor positions or periodic motion patterns. It can reconstruct accurate trajectories directly from raw inertial measurements, and predict the corresponding uncertainty to show model confidence. Extensive experimental evaluations demonstrate that the neural network produces position estimates with high accuracy for several different attachments, users, sensors, and motion types. As a particular demonstration of its flexibility, our deep inertial solutions can estimate trajectories for non-periodic motion, such as the shopping trolley tracking. Further more, it works in highly dynamic conditions, such as running, remaining extremely challenging for current techniques.
机译:由于其低成本和易用性,惯性测量单位(IMU)已成为当今许多室内导航解决方案中的重要组成部分。然而,尽管许多尝试降低了基于商业级惯性传感器的导航系统的误差生长,但仍然没有令人满意的解决方案,其在广泛不同的条件下产生了长期稳定性的导航估计。本文提出打破传统惯性算法中使用的连续集成的循环,将其作为优化问题,并探索使用深度复发性神经网络来估计用户在指定的时间窗口中的位移。通过使用惯性测量和地面真理位移数据训练深度神经网络,可以学习运动特性和系统的错误漂移。与建立的上下文辅助惯性解决方案相反,所提出的方法不依赖于固定的传感器位置或周期性运动模式。它可以直接从原始惯性测量重建精确的轨迹,并预测相应的不确定性来展示模型信心。广泛的实验评估表明,神经网络以高精度为几种不同的附件,用户,传感器和运动类型产生高精度的位置估计。作为其灵活性的特定演示,我们的深度惯性解决方案可以估算非周期性运动的轨迹,例如购物台车跟踪。此外,它在高度动态的条件下工作,例如运行,仍然非常具有挑战性的当前技术。

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