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A Knowledge-Based Approach to Automatic Detection of Equipment Alarm Sounds in a Neonatal Intensive Care Unit Environment

机译:一种基于知识的新生儿重症监护病房环境中设备警报声音的自动检测方法

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摘要

A large number of alarm sounds triggered by biomedical equipment occur frequently in the noisy environment of a neonatal intensive care unit (NICU) and play a key role in providing healthcare. In this paper, our work on the development of an automatic system for detection of acoustic alarms in that difficult environment is presented. Such automatic detection system is needed for the investigation of how a preterm infant reacts to auditory stimuli of the NICU environment and for an improved real-time patient monitoring. The approach presented in this paper consists of using the available knowledge about each alarm class in the design of the detection system. The information about the frequency structure is used in the feature extraction stage, and the time structure knowledge is incorporated at the post-processing stage. Several alternative methods are compared for feature extraction, modeling, and post-processing. The detection performance is evaluated with real data recorded in the NICU of the hospital, and by using both frame-level and period-level metrics. The experimental results show that the inclusion of both spectral and temporal information allows to improve the baseline detection performance by more than 60%.
机译:在新生儿重症监护病房(NICU)的嘈杂环境中,由生物医学设备触发的大量警报声经常发生,并且在提供医疗保健方面起着关键作用。在本文中,我们介绍了在这种困难环境中开发自动检测声音警报的系统的工作。这种自动检测系统对于调查早产婴儿对NICU环境的听觉刺激有何反应以及改进的实时患者监测是必需的。本文介绍的方法包括在检测系统的设计中使用有关每个警报类别的可用知识。有关频率结构的信息用于特征提取阶段,而时间结构知识则用于后处理阶段。比较了几种替代方法进行特征提取,建模和后处理。利用记录在医院重症监护病房中的真实数据并同时使用帧级和周期级指标来评估检测性能。实验结果表明,同时包含光谱和时间信息可以使基线检测性能提高60%以上。

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