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Wearable Sensor-Based Location-Specific Occupancy Detection in Smart Environments

机译:智能环境中基于可穿戴式传感器的特定位置的占位检测

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摘要

Occupancy detection helps enable various emerging smart environment applications ranging from opportunistic HVAC (heating, ventilation, and air-conditioning) control, effective meeting management, healthy social gathering, and public event planning and organization. Ubiquitous availability of smartphones and wearable sensors with the users for almost 24 hours helps revitalize a multitude of novel applications. The inbuilt microphone sensor in smartphones plays as an inevitable enabler to help detect the number of people conversing with each other in an event or gathering. A large number of other sensors such as accelerometer and gyroscope help count the number of people based on other signals such as locomotive motion. In this work, we propose multimodal data fusion and deep learning approach relying on the smartphone's microphone and accelerometer sensors to estimate occupancy. We first demonstrate a novel speaker estimation algorithm for people counting and extend the proposed model using deep nets for handling large-scale fluid scenarios with unlabeled acoustic signals. We augment our occupancy detection model with a magnetometer-dependent fingerprinting-based localization scheme to assimilate the volume of location-specific gathering. We also propose crowdsourcing techniques to annotate the semantic location of the occupant. We evaluate our approach in different contexts: conversational, silence, and mixed scenarios in the presence of 10 people. Our experimental results on real-life data traces in natural settings show that our cross-modal approach can achieve approximately 0.53 error count distance for occupancy detection accuracy on average.
机译:占用检测可帮助实现各种新兴的智能环境应用,包括机会性HVAC(供暖,通风和空调)控制,有效的会议管理,健康的社交聚会以及公共活动计划和组织。用户将近24小时无处不在的智能手机和可穿戴式传感器可用性,有助于重振众多新颖的应用程序。智能手机中内置的麦克风传感器是不可避免的促成因素,可帮助检测事件或聚会中相互交谈的人数。加速度计和陀螺仪等大量其他传感器可根据机车运动等其他信号来帮助统计人数。在这项工作中,我们提出了依赖智能手机的麦克风和加速度传感器来估计占用率的多模式数据融合和深度学习方法。我们首先展示了一种新颖的说话人估计算法,用于人们计数,并使用深网扩展了提出的模型,用于处理带有未标记声信号的大规模流体情况。我们通过基于磁力计的基于指纹的定位方案来扩大我们的占用检测模型,以吸收特定位置收集的数量。我们还提出了众包技术来注释乘员的语义位置。我们在不同的环境中评估我们的方法:在10个人在场的情况下进行对话,保持沉默和混合情景。我们在自然环境中的真实数据轨迹上的实验结果表明,我们的交叉模式方法平均可实现约0.53的错误计数距离,以提高占用率检测的准确性。

著录项

  • 来源
    《Mobile Information Systems》 |2018年第1期|4570182.1-4570182.21|共21页
  • 作者单位

    Univ Maryland Baltimore Cty, Dept Informat Syst, Baltimore, MD 21228 USA;

    Univ Maryland Baltimore Cty, Dept Informat Syst, Baltimore, MD 21228 USA;

    Univ Maryland Baltimore Cty, Dept Informat Syst, Baltimore, MD 21228 USA;

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  • 正文语种 eng
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