论文标题
根据多个身体区域和图形信号分析向前前进时深呼吸的识别
Identification of deep breath while moving forward based on multiple body regions and graph signal analysis
论文作者
论文摘要
本文提出了一种不引人注目的解决方案,当一个人走过全球深度摄像头时,可以自动识别深呼吸。当人体相对静止时,现有的非接触呼吸评估在受限条件下取得了令人满意的结果。当某人向前移动时,深度摄像机检测到的呼吸信号隐藏在后备箱位移和变形的信号中,并且信号长度由于短暂的停留时间而短,因此对我们建立模型构成了巨大的挑战。为了克服这些挑战,提出了基于多个目标的信号提取和选择方法,以自动从深度视频中获得信号信息。随后,采用图形信号分析(GSA)作为空间式滤波器,以擦除与呼吸无关的组件。最后,根据选定的呼吸信息信号建立了用于识别深呼吸的分类器。在验证实验中,所提出的方法分别以75.5%,76.2%,75.0%和75.2%的准确性,精度,召回和F1优于比较方法。该系统可以扩展到公共场所,为可能或正在经历身体或精神烦恼的人提供及时且普遍存在的帮助。
This paper presents an unobtrusive solution that can automatically identify deep breath when a person is walking past the global depth camera. Existing non-contact breath assessments achieve satisfactory results under restricted conditions when human body stays relatively still. When someone moves forward, the breath signals detected by depth camera are hidden within signals of trunk displacement and deformation, and the signal length is short due to the short stay time, posing great challenges for us to establish models. To overcome these challenges, multiple region of interests (ROIs) based signal extraction and selection method is proposed to automatically obtain the signal informative to breath from depth video. Subsequently, graph signal analysis (GSA) is adopted as a spatial-temporal filter to wipe the components unrelated to breath. Finally, a classifier for identifying deep breath is established based on the selected breath-informative signal. In validation experiments, the proposed approach outperforms the comparative methods with the accuracy, precision, recall and F1 of 75.5%, 76.2%, 75.0% and 75.2%, respectively. This system can be extended to public places to provide timely and ubiquitous help for those who may have or are going through physical or mental trouble.