Smokey:商用WiFi基础设施的无所不在的烟雾检测

Xiaolong Zheng, Jiliang Wang, Longfei Shangguan, Zimu Zhou, Yunhao Liu
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引用次数: 140

摘要

即使在文明国家实行室内禁烟,现有的基于视觉或传感器的吸烟检测方法也无法提供无处不在的吸烟检测。在本文中,我们首次尝试构建了一个无所不在的被动吸烟检测系统,该系统利用吸烟在WiFi信号上留下的模式来识别非视距和穿墙环境下的吸烟活动。我们研究吸烟者的行为,利用共同特征来识别吸烟过程中的一系列动作,避免了目标依赖的训练集,以达到较高的准确率。我们设计了一种基于前景检测的运动采集方法,以从多个噪声子载波中提取有意义的信息,即使这些子载波受到姿态变化的影响。在没有目标依从性要求的情况下,我们利用吸烟的节奏模式来减少检测误报。我们使用商用WiFi基础设施对Smokey进行原型设计,并评估其在真实环境中的性能。实验结果表明,Smokey在各种场景下都具有较好的准确性和鲁棒性。
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Smokey: Ubiquitous smoking detection with commercial WiFi infrastructures
Even though indoor smoking ban is being put into practice in civilized countries, existing vision or sensor-based smoking detection methods cannot provide ubiquitous smoking detection. In this paper, we take the first attempt to build a ubiquitous passive smoking detection system, which leverages the patterns smoking leaves on WiFi signals to identify the smoking activity even in the non-line-of-sight and through-wall environments. We study the behaviors of smokers and leverage the common features to recognize the series of motions during smoking, avoiding the target-dependent training set to achieve the high accuracy. We design a foreground detection based motion acquisition method to extract the meaningful information from multiple noisy subcarriers even influenced by posture changes. Without requirements of target's compliance, we leverage the rhythmical patterns of smoking to reduce the detection false positives. We prototype Smokey with the commodity WiFi infrastructure and evaluate its performance in real environments. Experimental results show Smokey is accurate and robust in various scenarios.
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