Institute of Smart Systems Technologies, Universitaet Klagenfurt, 9020 Klagenfurt, Austria.
P.SYS System Creation KG, 9500 Villach, Austria.
Sensors (Basel). 2022 Aug 21;22(16):6279. doi: 10.3390/s22166279.
Currently, abnormality detection and/or prediction is a very hot topic. In this paper, we addressed it in the frame of activity monitoring of a human in bed. This paper presents a comprehensive formulation of a requirements engineering dossier for a monitoring system of a "human in bed" for abnormal behavior detection and forecasting. Hereby, practical and real-world constraints and concerns were identified and taken into consideration in the requirements dossier. A comprehensive and holistic discussion of the anomaly concept was extensively conducted and contributed to laying the ground for a realistic specifications book of the anomaly detection system. Some systems engineering relevant issues were also briefly addressed, e.g., verification and validation. A structured critical review of the relevant literature led to identifying four major approaches of interest. These four approaches were evaluated from the perspective of the requirements dossier. It was thereby clearly demonstrated that the approach integrating graph networks and advanced deep-learning schemes (Graph-DL) is the one capable of fully fulfilling the challenging issues expressed in the real-world conditions aware specification book. Nevertheless, to meet immediate market needs, systems based on advanced statistical methods, after a series of adaptations, already ensure and satisfy the important requirements related to, e.g., low cost, solid data security and a fully embedded and self-sufficient implementation. To conclude, some recommendations regarding system architecture and overall systems engineering were formulated.
目前,异常检测和/或预测是一个非常热门的话题。在本文中,我们将在人类卧床活动监测的框架内解决这个问题。本文提出了一个全面的监测系统需求工程档案,用于检测和预测“卧床中的人”的异常行为。在此过程中,确定并考虑了实际和现实世界中的约束和关注点。广泛而全面地讨论了异常概念,为异常检测系统的现实规范书奠定了基础。还简要讨论了一些系统工程相关问题,例如验证和确认。对相关文献的结构化批判性回顾导致确定了四个主要的相关方法。从需求档案的角度评估了这四种方法。结果清楚地表明,将图网络和先进的深度学习方案集成的方法(Graph-DL)是一种能够完全满足现实条件下规范书中表达的挑战性问题的方法。然而,为了满足当前市场的需求,基于先进统计方法的系统在经过一系列调整后,已经能够确保并满足与低成本、可靠的数据安全性以及完全嵌入式和自给自足的实现等相关的重要要求。最后,提出了一些关于系统架构和整体系统工程的建议。