...
首页> 外文期刊>Advanced engineering informatics >Using footstep-induced vibrations for occupant detection and recognition in buildings
【24h】

Using footstep-induced vibrations for occupant detection and recognition in buildings

机译:使用脚步诱导的振动,在建筑物中占用和识别

获取原文
获取原文并翻译 | 示例
           

摘要

Occupant detection and recognition support functional goals such as security, healthcare, and energy management in buildings. Typical sensing approaches, such as smartphones and cameras, undermine the privacy of building occupants and inherently affect their behavior. To overcome these drawbacks, a non-intrusive technique using floor-vibration measurements, induced by human footsteps, is outlined. Detection of human-footstep impacts is an essential step to estimate the number of occupants, recognize their identities and provide an estimate of their probable locations. Detecting the presence of occupants on a floor is challenging due to ambient noise that may mask footstep-induced floor vibrations. Also, signals from multiple occupants walking simultaneously overlap, which may lead to inaccurate event separation. Signals corresponding to events, once extracted, can be used to identify the number of occupants and their locations. Spurious events such as door closing, chair dragging and falling objects may produce vibrations similar to footstep-impacts. Signals from such spurious events have to be discarded as outliers to prevent inaccurate interpretations of floor vibrations for occupant detection. Walking styles differ among occupants due to their anatomies, walking speed, shoe type, health and mood. Thus, footstep-impact vibrations from the same person may vary significantly, which adds uncertainty and complicates occupant recognition. In this paper, efficient strategies for event-detection and event-signal extraction have been described. These strategies are based on variations in standard deviations over time of measured signals (using a moving window) that have been filtered to contain only low-frequency components. Methods described in this paper for event detection and event-signal extraction perform better than existing threshold-based methods (fewer false positives and false negatives). Support vector machine classifiers are used successfully to distinguish footsteps from other events and to determine the number of occupants on a floor. Convolutional neural networks help recognize the identity of occupants using footstep-induced floor vibrations. The utility of these strategies for footstep-event detection, occupant counting, and recognition is validated successfully using two full-scale case studies.
机译:乘员检测和识别支持建筑物中的安全性,医疗保健和能源管理等功能目标。典型的传感方法,例如智能手机和相机,破坏建筑物的隐私,并自然地影响他们的行为。为了克服这些缺点,概述了使用人脚步的地板振动测量的非侵入式技术。人脚步的检测是估计乘员人数的重要步骤,识别其身份并提供可能的位置的估计。由于可能掩盖脚步诱导的地板振动,检测地板上的乘员的存在是具有挑战性的。此外,来自多个乘员的信号同时重叠,这可能导致事件分离不准确。对应于事件的信号,一旦提取,就可以用于识别乘员的数量及其位置。门关闭,椅子拖动和下降物体等杂散事件可能产生类似于脚步冲击的振动。来自这种虚假事件的信号必须被丢弃为异常值,以防止占用者检测的地板振动不准确解释。由于他们的解剖,步行速度,鞋类,健康和心情,散步风格不同。因此,来自同一个人的脚步撞击振动可能显着变化,这增加了不确定性并使乘员识别复杂化。在本文中,已经描述了事件检测和事件信号提取的有效策略。这些策略基于所测量信号(使用移动窗口)的标准偏差的变化,该信号已经过滤以仅包含低频分量。本文描述的用于事件检测和事件信号提取的方法比现有的基于阈值的方法更好(更少的误报和假否定)更好地执行。支持向量机分类器成功用于区分其他事件的脚步,并确定地板上的乘员数量。卷积神经网络有助于识别使用脚步诱导的地板振动的乘员的身份。这些策略对脚步事件检测,乘员计数和识别的效用是使用两个全尺度案例研究验证的。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号