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HONEY: A multimodality fall detection and telecare system

机译:HONEY:多模式跌倒检测和远程护理系统

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Background: The increasing cost in terms of money and healthcare resources is driving healthcare providers to provide home-based telecare instead of institutionalized healthcare. Falling is one of the most common and dangerous accidents for elderly individuals and a significant factor affecting the living quality of the elderly. Many efforts have been put toward providing a robust method to detect falls accurately and in a timely manner. This study facilitated a reliable, safe, and real-time home-based healthcare environment, which we have termed the Home Healthcare Sentinel System (HONEY), to detect falls for elderly people in the home telecare environment. The basic idea of HONEY is a three-step detection scheme that consists of multimodality signal sources, including an accelerometer sensor, audio, images, and video clips via speech recognition and on-demand video techniques. Materials and Methods: The magnitude of acceleration, corresponding to a user's movements, triggers fall detection combining speech recognition and on-demand video. If a fall occurs, an alarm e-mail is delivered to medical staff or caregivers at once, containing the fall information, so that caregivers could make a primary diagnosis based on it. This article also describes the implementation of the prototype of HONEY. Results: A comprehensive evaluation with 10 volunteers shows that HONEY has high accuracy of 94% for fall detection, 18% higher than the Advanced Magnitude Algorithm (AMA), which is a wearable sensor-based method, and the false-positive and false-negative rates are 3% and 10%, respectively, 19% and 16% lower than AMA, respectively. The average response time for a detected fall is 46.2 s, which is also short enough for first aid. Conclusions: In summary, HONEY provides a highly reliable and convenient fall detection solution for the home-based environment.
机译:背景:在金钱和医疗资源方面不断增加的成本正推动医疗服务提供商提供基于家庭的远程医疗服务,而不是机构化的医疗服务。跌倒是老年人最常见,最危险的事故之一,并且是影响老年人生活质量的重要因素。为了提供一种准确,及时地检测跌倒的可靠方法,已经进行了许多努力。这项研究促进了可靠,安全和实时的基于家庭的医疗环境,我们将其称为家庭医疗哨兵系统(HONEY),以检测家庭远程医疗环境中老年人的跌倒情况。 HONEY的基本思想是一个三步检测方案,该方案由多模态信号源组成,包括通过语音识别和点播视频技术的加速度传感器,音频,图像和视频剪辑。材料和方法:加速度的大小(对应于用户的运动)触发结合了语音识别和点播视频的跌倒检测。如果发生跌倒,警报电子邮件将立即发送给医务人员或护理人员,其中包含跌倒信息,以便护理人员可以基于该信息做出初步诊断。本文还介绍了HONEY原型的实现。结果:与10位志愿者进行的全面评估表明,HONEY的跌倒检测准确性高达94%,比基于可穿戴式传感器的先进幅度算法(AMA)高出18%,并且假阳性和假假率高。负面率分别为3%和10%,分别比AMA低19%和16%。检测到的跌倒的平均响应时间为46.2 s,对于急救也足够短。结论:总之,HONEY为家庭环境提供了高度可靠且方便的跌倒检测解决方案。

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