Noncontact Respiratory Anomaly Detection Using Infrared Light-Wave Sensing

IF 3.5 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Md Zobaer Islam;Brenden Martin;Carly Gotcher;Tyler Martinez;John F. O'Hara;Sabit Ekin
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Abstract

Human respiratory rate and its pattern convey essential information about the physical and psychological states of the subject. Abnormal breathing can indicate fatal health issues leading to further diagnosis and treatment. Wireless light-wave sensing (LWS) using incoherent infrared light shows promise in safe, discreet, efficient, and noninvasive human breathing monitoring without raising privacy concerns. The respiration monitoring system needs to be trained on different types of breathing patterns to identify breathing anomalies. The system must also validate the collected data as a breathing waveform, discarding any faulty data caused by external interruption, user movement, or system malfunction. To address these needs, this study simulated normal and different types of abnormal respiration using a robot that mimics human breathing patterns. Then, time-series respiration data were collected using infrared light-wave sensing technology. Three machine learning algorithms, decision tree, random forest and XGBoost, were applied to detect breathing anomalies and faulty data. Model performances were evaluated through cross-validation, assessing classification accuracy, precision, and recall scores. The random forest model achieved the highest classification accuracy of 96.75% with data collected at a 0.5 m distance. In general, ensemble models like random forest and XGBoost performed better than a single model in classifying the data collected at multiple distances from the LWS setup.
利用红外光波传感技术进行非接触式呼吸异常检测
人的呼吸频率及其模式传递着有关主体生理和心理状态的重要信息。异常呼吸可能预示着致命的健康问题,需要进一步诊断和治疗。使用非相干红外光的无线光波传感(LWS)技术在安全、隐蔽、高效和非侵入式人体呼吸监测方面前景广阔,且不会引起隐私方面的担忧。呼吸监测系统需要对不同类型的呼吸模式进行训练,以识别呼吸异常。系统还必须将收集到的数据验证为呼吸波形,剔除因外部中断、用户移动或系统故障而导致的错误数据。为了满足这些需求,本研究使用模仿人类呼吸模式的机器人模拟了正常和不同类型的异常呼吸。然后,利用红外光波传感技术收集时间序列呼吸数据。应用决策树、随机森林和 XGBoost 三种机器学习算法来检测呼吸异常和错误数据。通过交叉验证评估模型性能,评估分类准确度、精确度和召回分数。在 0.5 米距离采集的数据中,随机森林模型的分类准确率最高,达到 96.75%。总体而言,在对从 LWS 设置多距离收集的数据进行分类时,随机森林和 XGBoost 等集合模型的表现优于单一模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
IEEE Transactions on Human-Machine Systems
IEEE Transactions on Human-Machine Systems COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-COMPUTER SCIENCE, CYBERNETICS
CiteScore
7.10
自引率
11.10%
发文量
136
期刊介绍: The scope of the IEEE Transactions on Human-Machine Systems includes the fields of human machine systems. It covers human systems and human organizational interactions including cognitive ergonomics, system test and evaluation, and human information processing concerns in systems and organizations.
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