基于脚步声诱发结构振动的室内人员识别

Shijia Pan, Ningning Wang, Yuqiu Qian, Irem Velibeyoglu, H. Noh, Pei Zhang
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引用次数: 117

摘要

人员识别在各种智能建筑应用中至关重要,包括客户行为分析,患者监控等。先前的人员识别工作主要集中在访问控制相关的应用上。它们通过特定的传感器感知某些生物特征来实现身份识别。然而,由于仪器和传感的限制,这些方法和设备可能是侵入性的,并且不可扩展。本文介绍了一种利用行人感应结构振动的室内人物识别系统。由于可以在不中断人类活动的情况下测量结构振动,因此我们的系统适用于许多无处不在的传感应用。我们的系统能感应地板振动并检测脚步声引起的信号。然后,系统从代表每个人步态模式特征的信号中提取特征。利用提取的特征,系统在单个步骤级别进行分层分类,然后在跟踪级别(即连续步骤的集合)进行分层分类。系统平均识别准确率达到83%以上。此外,当应用需要不同程度的精度时,我们的系统可以调整置信度阈值来丢弃不确定的痕迹。例如,在只允许大多数50%的分类痕迹的阈值下,识别准确率增加到96.5%。
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Indoor Person Identification through Footstep Induced Structural Vibration
Person identification is crucial in various smart building applications, including customer behavior analysis, patient monitoring, etc. Prior works on person identification mainly focused on access control related applications. They achieve identification by sensing certain biometrics with specific sensors. However, these methods and apparatuses can be intrusive and not scalable because of instrumentation and sensing limitations. In this paper, we introduce our indoor person identification system that utilizes footstep induced structural vibration. Because structural vibration can be measured without interrupting human activities, our system is suitable for many ubiquitous sensing applications. Our system senses floor vibration and detects the signal induced by footsteps. Then the system extracts features from the signals that represent characteristics of each person's gait pattern. With the extracted features, the system conducts hierarchical classification at an individual step level and then at a trace (i.e., collection of consecutive steps) level. Our system achieves over 83% identification accuracy on average. Furthermore, when the application requires different levels of accuracy, our system can adjust confidence level threshold to discard uncertain traces. For example, at a threshold that allows only most certain 50% traces for classification, the identification accuracy increases to 96.5%.
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