Faculty of Electronic Information and Electrical Engineering, Dalian University of Technology, Dalian 116023, China.
Sensors (Basel). 2020 Mar 3;20(5):1381. doi: 10.3390/s20051381.
Driver distraction and fatigue are among the leading contributing factors in various fatal accidents. Driver activity monitoring can effectively reduce the number of roadway accidents. Besides the traditional methods that rely on camera or wearable devices, wireless technology for driver's activity monitoring has emerged with remarkable attention. With substantial progress in WiFi-based device-free localization and activity recognition, radio-image features have achieved better recognition performance using the proficiency of image descriptors. The major drawback of image features is computational complexity, which increases exponentially, with the growth of irrelevant information in an image. It is still unresolved how to choose appropriate radio-image features to alleviate the expensive computational burden. This paper explores a computational efficient wireless technique that could recognize the attentive and inattentive status of a driver leveraging Channel State Information (CSI) of WiFi signals. In this novel research work, we demonstrate an efficient scheme to extract the representative features from the discriminant components of radio-images to reduce the computational cost with significant improvement in recognition accuracy. Specifically, we addressed the problem of the computational burden by efficacious use of Gabor filters with gray level statistical features. The presented low-cost solution requires neither sophisticated camera support to capture images nor any special hardware to carry with the user. This novel framework is evaluated in terms of activity recognition accuracy. To ensure the reliability of the suggested scheme, we analyzed the results by adopting different evaluation metrics. Experimental results show that the presented prototype outperforms the traditional methods with an average recognition accuracy of 93 . 1 % in promising application scenarios. This ubiquitous model leads to improve the system performance significantly for the diverse scale of applications. In the realm of intelligent vehicles and assisted driving systems, the proposed wireless solution can effectively characterize the driving maneuvers, primary tasks, driver distraction, and fatigue by exploiting radio-image descriptors.
驾驶员分心和疲劳是各种致命事故的主要原因之一。驾驶员活动监控可以有效地减少道路交通事故的数量。除了依赖摄像头或可穿戴设备的传统方法外,用于驾驶员活动监控的无线技术也引起了人们的极大关注。随着基于 WiFi 的无设备定位和活动识别技术的显著进展,无线电图像特征利用图像描述符的优势,实现了更好的识别性能。图像特征的主要缺点是计算复杂性,随着图像中无关信息的增长,计算复杂性呈指数级增长。如何选择合适的无线电图像特征来减轻昂贵的计算负担仍然是一个未解决的问题。本文探讨了一种计算效率高的无线技术,该技术可以利用 WiFi 信号的信道状态信息(CSI)识别驾驶员的专注和不专注状态。在这项新的研究工作中,我们展示了一种从无线电图像的判别分量中提取代表性特征的有效方案,以降低计算成本,同时显著提高识别精度。具体来说,我们通过有效利用具有灰度统计特征的 Gabor 滤波器来解决计算负担问题。所提出的低成本解决方案既不需要复杂的摄像头来捕捉图像,也不需要用户携带任何特殊硬件。该新框架根据活动识别精度进行评估。为了确保所提出方案的可靠性,我们通过采用不同的评估指标来分析结果。实验结果表明,所提出的原型在有前途的应用场景中平均识别精度为 93.1%,优于传统方法。这种无处不在的模型显著提高了各种规模应用的系统性能。在智能车辆和辅助驾驶系统中,所提出的无线解决方案可以通过利用无线电图像描述符有效地描述驾驶动作、主要任务、驾驶员分心和疲劳。