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Event-Centered Data Segmentation in Accelerometer-Based Fall Detection Algorithms

机译:基于加速度计的秋季检测算法中的活动中心数据分段

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摘要

Automatic fall detection systems ensure that elderly people get prompt assistance after experiencing a fall. Fall detection systems based on accelerometer measurements are widely used because of their portability and low cost. However, the ability of these systems to differentiate falls from Activities of Daily Living (ADL) is still not acceptable for everyday usage at a large scale. More work is still needed to raise the performance of these systems. In our research, we explored an essential but often neglected part of accelerometer-based fall detection systems—data segmentation. The aim of our work was to explore how different configurations of windows for data segmentation affect detection accuracy of a fall detection system and to find the best-performing configuration. For this purpose, we designed a testing environment for fall detection based on a Support Vector Machine (SVM) classifier and evaluated the influence of the number and duration of segmentation windows on the overall detection accuracy. Thereby, an event-centered approach for data segmentation was used, where windows are set relative to a potential fall event detected in the input data. Fall and ADL data records from three publicly available datasets were utilized for the test. We found that a configuration of three sequential windows (pre-impact, impact, and post-impact) provided the highest detection accuracy on all three datasets. The best results were obtained when either a 0.5 s or a 1 s long impact window was used, combined with pre- and post-impact windows of 3.5 s or 3.75 s.
机译:自动跌落检测系统确保老年人在经历秋季后获得迅速的帮助。由于其可移植性和低成本,基于加速度计测量的秋季检测系统被广泛使用。然而,这些系统在日常生活(ADL)的活动中区分的能力仍然不可接受,因为日常使用大规模使用。仍然需要更多的作品来提高这些系统的性能。在我们的研究中,我们探讨了基于加速度计的秋季检测系统数据分割的必要而常被忽略的部分。我们的作品的目的是探讨Windows的不同配置如何影响数据分割的检测精度,并找到最佳配置的配置。为此目的,我们设计了基于支持向量机(SVM)分类器的堕落检测的测试环境,并评估了对整体检测精度的分割窗口数量和持续时间的影响。因此,使用了用于数据分割的活动居中方法,其中窗口相对于在输入数据中检测到的潜在秋季事件。来自三个公开可用数据集的秋季和ADL数据记录用于测试。我们发现,三个顺序窗口的配置(预冲击,影响和后冲击)为所有三个数据集提供了最高的检测精度。当使用0.5秒或1秒的长冲击窗口时,可以获得最佳结果,与3.5秒或3.75秒的前后窗户合并。

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