Higher School of Communication of Tunis, Research Lab. COSIM, Carthage University, Tunis 2088, Tunisia.
Laboratoire de Recherche en Imagerie et en Orthopédie, CRCHUM, Montreal, QC H2X 0A9, Canada.
Sensors (Basel). 2021 Feb 2;21(3):1020. doi: 10.3390/s21031020.
This paper has two objectives: the first is to generate two binary flags to indicate useful frames permitting the measurement of cardiac and respiratory rates from Ballistocardiogram (BCG) signals-in fact, human body activities during measurements can disturb the BCG signal content, leading to difficulties in vital sign measurement; the second objective is to achieve refined BCG signal segmentation according to these activities. The proposed framework makes use of two approaches: an unsupervised classification based on the Gaussian Mixture Model (GMM) and a supervised classification based on K-Nearest Neighbors (KNN). Both of these approaches consider two spectral features, namely the Spectral Flatness Measure (SFM) and Spectral Centroid (SC), determined during the feature extraction step. Unsupervised classification is used to explore the content of the BCG signals, justifying the existence of different classes and permitting the definition of useful hyper-parameters for effective segmentation. In contrast, the considered supervised classification approach aims to determine if the BCG signal content allows the measurement of the heart rate (HR) and the respiratory rate (RR) or not. Furthermore, two levels of supervised classification are used to classify human-body activities into many realistic classes from the BCG signal (e.g., coughing, holding breath, air expiration, movement, et al.). The first one considers frame-by-frame classification, while the second one, aiming to boost the segmentation performance, transforms the frame-by-frame SFM and SC features into temporal series which track the temporal variation of the measures of the BCG signal. The proposed approach constitutes a novelty in this field and represents a powerful method to segment BCG signals according to human body activities, resulting in an accuracy of 94.6%.
第一个是生成两个二进制标志,以指示有用的帧,允许从心冲击图(BCG)信号中测量心率和呼吸率;实际上,在测量过程中人体活动会干扰 BCG 信号的内容,导致生命体征测量困难。第二个目标是根据这些活动实现对 BCG 信号的精细分段。所提出的框架利用了两种方法:基于高斯混合模型(GMM)的无监督分类和基于 K-最近邻(KNN)的监督分类。这两种方法都考虑了两个光谱特征,即谱平坦度测量(SFM)和谱质心(SC),在特征提取步骤中确定。无监督分类用于探索 BCG 信号的内容,证明存在不同的类别,并允许为有效的分段定义有用的超参数。相比之下,所考虑的监督分类方法旨在确定 BCG 信号的内容是否允许测量心率(HR)和呼吸率(RR)。此外,使用两种监督分类级别将 BCG 信号中的人体活动分类为许多现实的类别(例如,咳嗽、屏气、呼气、运动等)。第一个级别考虑逐帧分类,而第二个级别旨在提高分段性能,将逐帧的 SFM 和 SC 特征转换为时间序列,以跟踪 BCG 信号的测量值的时间变化。所提出的方法在该领域具有创新性,是一种根据人体活动对 BCG 信号进行分段的强大方法,准确率达到 94.6%。