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Indoor Person Identification and Fall Detection through Non-intrusive Floor Seismic Sensing

机译:通过非侵入性地板抗震感测的室内人员识别和崩溃

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This paper presents a novel in-network person identification and fall detection system that uses floor seismic data produced by footsteps and fall downs as an only source for recognition. Compared with other existing methods, our approach is done in real-time, which means the system is able to identify a person almost immediately with only one or two footsteps. An adapted in-network localization method is proposed in which sensors collaborate among them to recognize the person walking, and most importantly, detect if the person falls down at any moment. We also introduce a voting system among sensor nodes to improve accuracy in person identification. Our system is innovative since it can be robust to identify fall downs from other possible events, like jumps, door close, objects fall down, etc. Such a smart system can also be connected to smart commercial devices (like Google Home or Amazon Alexa) for emergency notifications. Our approach represents an advance in smart technology for elder people who live alone. Evaluation of the system shows it is able to identify people with one or two steps in an average of 93.75% (higher accuracy than other methods that use more footsteps), and it detects fall downs with an acceptance rate of 95.14% (distinguishing from other possible events). The fall down localization error is smaller than 0.28 meters, which it is acceptable compared to the height of a person.
机译:本文提出了一种新的网络人物识别和堕落检测系统,它使用脚步声产生的地板地震数据,并作为唯一的识别来源。与其他现有方法相比,我们的方法是实时完成的,这意味着系统能够只立即识别一个或两个脚步的人。提出了一种适应的网络内定位方法,其中传感器在它们之间进行协作以识别人们走路,最重要的是,检测该人是否随时落下。我们还在传感器节点之间介绍了一个投票系统,以提高人员识别的准确性。我们的系统是创新的创新,因为它可以识别从其他可能的事件中掉下来掉落,如跳跃,门关闭,物体下降等。这样的智能系统也可以连接到智能商业设备(如谷歌房屋或亚马逊Alexa)对于紧急通知。我们的方法代表了独自生活的老年人智能技术的进步。对系统的评估表明,它能够平均识别一个或两个步骤的人,平均为93.75%(比使用更多脚步的其他方法更高的准确性),并且它检测到占用率为95.14%的折叠(区分其他方法)可能的事件)。跌倒定位误差小于0.28米,与人的高度相比是可接受的。

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