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Gait Event Detection in Real-World Environment for Long-Term Applications : Incorporating Domain Knowledge into Time-Frequency Analysis

机译:长期应用中真实世界环境中的步态事件检测:将领域知识纳入时频分析

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摘要

Detecting gait events is the key to many gait analysis applications that would benefit from continuous monitoring or long-term analysis. Most gait event detection algorithms using wearable sensors that offer a potential for use in daily living have been developed from data collected in controlled indoor experiments. However, for real-word applications, it is essential that the analysis is carried out in humansâ\u80\u99 natural environment; that involves different gait speeds, changing walking terrains, varying surface inclinations and regular turns among other factors. Existing domain knowledge in the form of principles or underlying fundamental gait relationships can be utilized to drive and support the data analysis in order to develop robust algorithms that can tackle real-world challenges in gait analysis. This paper presents a novel approach that exhibits how domain knowledge about human gait can be incorporated into time-frequency analysis to detect gait events from longterm accelerometer signals. The accuracy and robustness of the proposed algorithm are validated by experiments done in indoor and outdoor environments with approximately 93,600 gait events in total. The proposed algorithm exhibits consistently high performance scores across all datasets in both, indoor and outdoor environments. © Copyright 2016 IEEE
机译:检测步态事件是许多步态分析应用程序的关键,这些应用程序将从连续监视或长期分析中受益。大多数可穿戴传感器的步态事件检测算法都是根据可控室内实验中收集到的数据开发出来的,可穿戴传感器在日常生活中具有潜在用途。但是,对于实词应用程序,必须在人类的自然环境中进行分析,这一点至关重要。涉及不同的步态速度,变化的步行地形,变化的表面倾斜度和规则的转弯等因素。可以利用原理或潜在基本步态关系形式的现有领域知识来驱动和支持数据分析,以便开发可解决步态分析中实际挑战的强大算法。本文提出了一种新颖的方法,该方法展示了如何将有关人类步态的领域知识整合到时频分析中,以从长期加速度计信号中检测步态事件。通过在室内和室外环境中进行的实验总共验证了大约93,600个步态事件,验证了所提算法的准确性和鲁棒性。所提出的算法在室内和室外环境下的所有数据集中均表现出始终如一的高性能得分。 ©版权所有2016 IEEE

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