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首页> 外文期刊>IEEE sensors journal >Robust Data-Driven Zero-Velocity Detection for Foot-Mounted Inertial Navigation
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Robust Data-Driven Zero-Velocity Detection for Foot-Mounted Inertial Navigation

机译:脚踏式惯性导航的强大数据驱动零速度检测

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摘要

We present two novel techniques for detecting zero-velocity events to improve foot-mounted inertial navigation. Our first technique augments a classical zero-velocity detector by incorporating a motion classifier that adaptively updates the detector's threshold parameter. Our second technique uses a long short-term memory (LSTM) recurrent neural network to classify zero-velocity events from raw inertial data, in contrast to the majority of zero-velocity detection methods that rely on basic statistical hypothesis testing. We demonstrate that both of our proposed detectors achieve higher accuracies than existing detectors for trajectories including walking, running, and stair-climbing motions. Additionally, we present a straightforward data augmentation method that is able to extend the LSTM-based model to different inertial sensors without the need to collect new training data.
机译:我们提出了两种用于检测零速度事件以改善脚踏惯性导航的新颖技术。我们的第一技术通过结合运动分类器来增强经典的零速度检测器,该运动分类器可自适应地更新检测器的阈值参数。我们的第二种技术使用了长期短期内存(LSTM)复发性神经网络来分类来自原始惯性数据的零速度事件,与依赖基本统计假设检测的大多数零速度检测方法相比。我们展示我们所提出的探测器两者都比现有的探测器达到更高的准确性,包括步行,跑步和楼梯运动。此外,我们介绍了一种直接的数据增强方法,可以将基于LSTM的模型扩展到不同的惯性传感器,而无需收集新的培训数据。

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