Fall prevalence is high among elderly people, which is challenging due to the severe consequences of falling. This is why rapid assistance is a critical task. Ambient assisted living (AAL) uses recent technologies such as 5G networks and the internet of medical things (IoMT) to address this research area. Edge computing can reduce the cost of cloud communication, including high latency and bandwidth use, by moving conventional healthcare services and applications closer to end-users. Artificial intelligence (AI) techniques such as deep learning (DL) have been used recently for automatic fall detection, as well as supporting healthcare services. However, DL requires a vast amount of data and substantial processing power to improve its performance for the IoMT linked to the traditional edge computing environment. This research proposes an effective fall detection framework based on DL algorithms and mobile edge computing (MEC) within 5G wireless networks, the aim being to empower IoMT-based healthcare applications. We also propose the use of a deep gated recurrent unit (DGRU) neural network to improve the accuracy of existing DL-based fall detection methods. DGRU has the advantage of dealing with time-series IoMT data, and it can reduce the number of parameters and avoid the vanishing gradient problem. The experimental results on two public datasets show that the DGRU model of the proposed framework achieves higher accuracy rates compared to the current related works on the same datasets.
翻译:在老年人中,下降率很高,这是由于下降的严重后果而具有挑战性的。这就是为什么快速援助是一项关键任务的原因。在协助下生活的人(AAL)使用5G网络和医疗用物品互联网(IOMT)等最新技术来应对这一研究领域。边缘计算可以降低云层通信成本,包括高延缓率和带宽使用,办法是将常规保健服务和应用更接近最终用户。人工智能(AI)技术,如深学习(DL)技术最近被用于自动下降检测和支持保健服务。然而,DL需要大量数据和大量处理能力来改进其与传统边缘计算环境相连的IOMT的性能。这项研究提出一个基于DL算法和移动边缘计算(MEC)在5G无线网络内的有效下降检测框架,目的是增强基于IOMT的保健应用能力。我们还提议使用一个深门经常单元(DGRU)神经网络来提高基于DL的现有下降检测方法的准确性。DGRR拥有处理与传统边缘计算环境相联的IMDR数据的精确度的优势。DR可以将数据推算用于两个实验性数据库,从而减少与SDR的升级的数据结果。