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Methods for preprocessing time and distance series data from personal monitoring devices

机译:来自个人监控设备的预处理时间和距离序列数据的方法

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There is a need to develop more advanced tools to improve guidance on physical exercise to reduce risk of adverse events and improve benefits of exercise. Vast amounts of data are generated continuously by Personal Monitoring Devices (PMDs) from sports events, biomedical experiments, and fitness self-monitoring that may be used to guide physical exercise. Most of these data are sampled as time- or distance-series. However, the inherent high-dimensionality of exercise data is a challenge during processing. As a result, current data analysis from PMDs seldomly extends beyond aggregates.Common?challanges?are:?alterations in data density comparing the time- and the distance domain;?large intra and interindividual variations in the relationship between numerical data and physiological properties;?alterations in temporal statistical properties of data derived from exercise of different exercise durations.These challenges are currently unresolved leading to suboptimal analytic models. In this paper, we present algorithms and approaches to address these problems, allowing the analysis of complete PMD datasets, rather than having to rely on cumulative statistics. Our suggested approaches permit effective application of established Symbolic Aggregate Approximation modeling and newer deep learning models, such as LSTM.
机译:有必要开发更先进的工具,以改善体育锻炼的指导,以降低不良事件的风险,提高运动效益。通过来自体育赛事,生物医学实验和适用性自我监测的个人监控设备(PMDS)连续生成大量数据,并可用于指导体育锻炼。大多数这些数据被采样为时间或距离系列。然而,运动数据的固有高度是在处理过程中的挑战。结果,来自PMDS的当前数据分析很少延伸超过聚合统计学?挑战?是:?数据密度的改变比较时间和距离域;?数值数据和生理特性之间的关系大的内部和解变化; ?从行使不同运动持续时间的数据的时间统计特性的改变。目前挑战目前尚未得到解决,导致次优分析模型。在本文中,我们提供了解决这些问题的算法和方法,允许分析完整的PMD数据集,而不是必须依赖累积统计数据。我们建议的方法允许有效地应用建立的符号聚合近似建模和更新的深度学习模型,例如LSTM。

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