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NT-FDS—A Noise Tolerant Fall Detection System Using Deep Learning on Wearable Devices

机译:NT-FDS-A噪声容差落下检测系统在可穿戴设备上使用深度学习

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摘要

Given the high prevalence and detrimental effects of unintentional falls in the elderly, fall detection has become a pertinent public concern. A Fall Detection System (FDS) gathers information from sensors to distinguish falls from routine activities in order to provide immediate medical assistance. Hence, the integrity of collected data becomes imperative. Presence of missing values in data, caused by unreliable data delivery, lossy sensors, local interference and synchronization disturbances and so forth, greatly hamper the credibility and usefulness of data making it unfit for reliable fall detection. This paper presents a noise tolerant FDS performing in presence of missing values in data. The work focuses on Deep Learning (DL) particularly Recurrent Neural Networks (RNNs) with an underlying Bidirectional Long Short-Term Memory (BiLSTM) stack to implement FDS based on wearable sensors. The proposed technique is evaluated on two publicly available datasets—SisFall and UP-Fall Detection. Our system produces an accuracy of 97.21% and 97.41%, sensitivity of 96.97% and 99.77% and specificity of 93.18% and 91.45% on SisFall and UP-Fall Detection respectively, thus outperforming the existing state of the art on these benchmark datasets. The resultant outcomes suggest that the ability of BiLSTM to retain long term dependencies from past and future make it an appropriate model choice to handle missing values for wearable fall detection systems.
机译:鉴于老年人无意下降的高普遍性和不利影响,跌落检测已成为一个有关的公众关注。跌倒检测系统(FDS)收集来自传感器的信息以区分常规活动的落后,以便提供立即的医疗援助。因此,收集数据的完整性变得势在必行。由不可靠的数据传送,有损传感器,局部干扰和同步干扰等缺失的数据中缺失值,大大妨碍了数据的可信度和有用性,使其不适合可靠的坠落检测。本文介绍了在数据中存在缺失值的噪声容差的FDS。该工作侧重于深度学习(DL)特别是经常性的神经网络(RNN),其具有基础的双向长期内记忆(BILSTM)堆栈来实现基于可穿戴传感器的FDS。所提出的技术是在两个公共可用的数据集 - Sisfall和上降检测中进行评估。我们的系统可产生97.21%和97.41%,灵敏度为96.97%,99.77%,特异性分别为93.18%和91.45%,分别为93.18%和91.45%,从而优于这些基准数据集的现有技术状态。结果结果表明,Bilstm从过去和未来保留长期依赖性的能力使其成为一种适当的模型选择,以处理可穿戴坠落检测系统的缺失值。

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