School of Automotive Studies, Tongji University, Shanghai 201804, China.
Univ Lyon, Univ Gustave Eiffel, Université Claude Bernard Lyon 1, LBMC UMR_T9406, F69622 Lyon, France.
Sensors (Basel). 2021 May 12;21(10):3346. doi: 10.3390/s21103346.
Pressure sensors are good candidates for measuring driver postural information, which is indicative for identifying driver's intention and seating posture. However, monitoring systems based on pressure sensors must overcome the price barriers in order to be practically feasible. This study, therefore, was dedicated to explore the possibility of using pressure sensors with lower resolution for driver posture monitoring. We proposed pressure features including center of pressure, contact area proportion, and pressure ratios to recognize five typical trunk postures, two typical left foot postures, and three typical right foot postures. The features from lower-resolution mapping were compared with those from high-resolution Xsensor pressure mats on the backrest and seat pan. We applied five different supervised machine-learning techniques to recognize the postures of each body part and used leave-one-out cross-validation to evaluate their performance. A uniform sampling method was used to reduce number of pressure sensors, and five new layouts were tested by using the best classifier. Results showed that the random forest classifier outperformed the other classifiers with an average classification accuracy of 86% using the original pressure mats and 85% when only 8% of the pressure sensors were available. This study demonstrates the feasibility of using fewer pressure sensors for driver posture monitoring and suggests research directions for better sensor designs.
压力传感器是测量驾驶员姿势信息的理想选择,这些信息可用于识别驾驶员的意图和座椅姿势。然而,基于压力传感器的监测系统必须克服价格障碍才能实际可行。因此,本研究旨在探索使用具有较低分辨率的压力传感器进行驾驶员姿势监测的可能性。我们提出了压力特征,包括压力中心、接触面积比例和压力比,以识别五种典型的躯干姿势、两种典型的左脚姿势和三种典型的右脚姿势。将低分辨率映射的特征与靠背和座垫上高分辨率 Xsensor 压力垫的特征进行了比较。我们应用了五种不同的监督机器学习技术来识别每个身体部位的姿势,并使用留一法交叉验证来评估它们的性能。采用均匀采样方法来减少压力传感器的数量,并使用最佳分类器测试了五个新的布局。结果表明,随机森林分类器的性能优于其他分类器,使用原始压力垫的平均分类准确率为 86%,当仅使用 8%的压力传感器时,准确率为 85%。本研究证明了使用较少压力传感器进行驾驶员姿势监测的可行性,并为更好的传感器设计提出了研究方向。