IDLab, Ghent University-imec, Zwijnaarde, Belgium.
Sci Rep. 2024 Mar 5;14(1):5392. doi: 10.1038/s41598-024-56123-0.
The detection of Activities of Daily Living (ADL) holds significant importance in a range of applications, including elderly care and health monitoring. Our research focuses on the relevance of ADL detection in elderly care, highlighting the importance of accurate and unobtrusive monitoring. In this paper, we present a novel approach that that leverages smartphone data as the primary source for detecting ADLs. Additionally, we investigate the possibilities offered by ambient sensors installed in smart home environments to complement the smartphone data and optimize the ADL detection. Our approach uses a Long Short-Term Memory (LSTM) model. One of the key contributions of our work is defining ADL detection as a multilabeling problem, allowing us to detect different activities that occur simultaneously. This is particularly valuable since in real-world scenarios, individuals can perform multiple activities concurrently, such as cooking while watching TV. We also made use of unlabeled data to further enhance the accuracy of our model. Performance is evaluated on a real-world collected dataset, strengthening reliability of our findings. We also made the dataset openly available for further research and analysis. Results show that utilizing smartphone data alone already yields satisfactory results, above 50% true positive rate and balanced accuracy for all activities, providing a convenient and non-intrusive method for ADL detection. However, by incorporating ambient sensors, as an additional data source, one can improve the balanced accuracy of the ADL detection by 7% and 8% of balanced accuracy and true positive rate respectively, on average.
日常生活活动(ADL)的检测在许多应用中都非常重要,包括老年人护理和健康监测。我们的研究重点是 ADL 检测在老年人护理中的相关性,强调准确和非侵入性监测的重要性。在本文中,我们提出了一种新的方法,该方法利用智能手机数据作为检测 ADL 的主要数据源。此外,我们还研究了智能家居环境中安装的环境传感器提供的可能性,以补充智能手机数据并优化 ADL 检测。我们的方法使用了长短期记忆(LSTM)模型。我们工作的一个关键贡献是将 ADL 检测定义为多标签问题,允许我们同时检测不同的活动。这是特别有价值的,因为在现实场景中,个人可以同时进行多个活动,例如做饭同时看电视。我们还利用未标记的数据进一步提高了模型的准确性。我们在真实收集的数据集上进行了性能评估,增强了研究结果的可靠性。我们还公开了数据集,以供进一步的研究和分析。结果表明,仅使用智能手机数据就能获得令人满意的结果,对于所有活动,真阳性率和平衡准确性都超过 50%,为 ADL 检测提供了一种方便且非侵入性的方法。然而,通过将环境传感器作为附加数据源进行整合,平均而言,ADL 检测的平衡准确性可以分别提高 7%和 8%。