Laboratory for Electrical Instrumentation and Embedded Systems, Department of Microsystems Engineering-IMTEK, University of Freiburg, Georges-Köhler-Allee 106, 79110 Freiburg, Germany.
Sensors (Basel). 2023 Jul 28;23(15):6771. doi: 10.3390/s23156771.
Good feature engineering is a prerequisite for accurate classification, especially in challenging scenarios such as detecting the breathing of living persons trapped under building rubble using bioradar. Unlike monitoring patients' breathing through the air, the measuring conditions of a rescue bioradar are very complex. The ultimate goal of search and rescue is to determine the presence of a living person, which requires extracting representative features that can distinguish measurements with the presence of a person and without. To address this challenge, we conducted a bioradar test scenario under laboratory conditions and decomposed the radar signal into different range intervals to derive multiple virtual scenes from the real one. We then extracted physical and statistical quantitative features that represent a measurement, aiming to find those features that are robust to the complexity of rescue-radar measuring conditions, including different rubble sites, breathing rates, signal strengths, and short-duration disturbances. To this end, we utilized two methods, Analysis of Variance (ANOVA), and Minimum Redundancy Maximum Relevance (MRMR), to analyze the significance of the extracted features. We then trained the classification model using a linear kernel support vector machine (SVM). As the main result of this work, we identified an optimal feature set of four features based on the feature ranking and the improvement in the classification accuracy of the SVM model. These four features are related to four different physical quantities and independent from different rubble sites.
良好的特征工程是准确分类的前提,特别是在使用生物雷达检测困在建筑物瓦砾下的活体呼吸等具有挑战性的场景中。与通过空气监测患者的呼吸不同,救援生物雷达的测量条件非常复杂。搜索和救援的最终目标是确定是否存在活体,这需要提取具有代表性的特征,可以区分有人存在和无人存在的测量。为了应对这一挑战,我们在实验室条件下进行了生物雷达测试场景,并将雷达信号分解为不同的距离间隔,从真实场景中得出多个虚拟场景。然后,我们提取了物理和统计定量特征来表示测量,旨在找到那些对救援雷达测量条件复杂性具有鲁棒性的特征,包括不同的瓦砾地点、呼吸率、信号强度和短时间干扰。为此,我们使用了两种方法,方差分析(ANOVA)和最小冗余最大相关性(MRMR),来分析提取特征的显著性。然后,我们使用线性核支持向量机(SVM)训练分类模型。作为这项工作的主要结果,我们根据特征排名和 SVM 模型分类准确性的提高,确定了一个基于四个特征的最佳特征集。这四个特征与四个不同的物理量有关,与不同的瓦砾地点无关。