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Recognizing Cigarette Smoke Inhalations using Hidden Markov Models

机译:使用隐马尔可夫模型识别卷烟吸入吸入

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Previous studies with the Personal Automatic Cigarette Tracker (PACT) wearable system have found that smoking presents a distinct temporal breathing pattern, which might be well-suited for recognition by hidden Markov models (HMMs). In this work, we explored the feasibility of using HMMs to characterize the temporal information of smoking inhalations contained in the respiratory signals such as tidal volume, airflow, and the signal from the hand-to-mouth proximity sensor. Left-to-right HMMs were built to classify smoking and non-smoking inhalations using either only the respiratory signals, or both respiratory and hand proximity signals. Using a data set of 20 subjects, a leave-one-out cross-validation was performed on each HMM. In the recognition of smoke inhalations, the highest average recall, precision and F-score perceived by the HMMs was 42.39%, 88.19% and 56.38%, respectively, providing a 7.3% improvement in recall against a previously reported Support Vector Machines.
机译:以前的使用个人自动卷烟跟踪器(PACT)可穿戴系统的研究发现,吸烟呈现出不同的时间呼吸图案,这可能非常适合通过隐马尔可夫模型(HMMS)识别。在这项工作中,我们探讨了使用HMMS的可行性来表征包含在呼吸信号中的吸烟吸入的时间信息,例如潮气量,气流和来自手动接近传感器的信号。建立左右HMMS以使用仅呼吸信号或呼吸和手动接近信号来分类吸烟和非吸烟吸入。使用20个受试者的数据集,对每个HMM进行休假交叉验证。在识别烟雾吸入中,HMMS的最高平均召回,精确度和F分数分别为42.39%,88.19%和56.38%,提供了对先前报道的支持载体机的召回的7.3%。

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