Drowsiness driving is a major cause of traffic accidents and thus numerous previous researches have focused on driver drowsiness detection. Many drive relevant factors have been taken into consideration for fatigue detection and can lead to high precision, but there are still several serious constraints, such as most existing models are environmentally susceptible. In this paper, fatigue detection is considered as temporal action detection problem instead of image classification. The proposed detection system can be divided into four parts: (1) Localize the key patches of the detected driver picture which are critical for fatigue detection and calculate the corresponding optical flow. (2) Contrast Limited Adaptive Histogram Equalization (CLAHE) is used in our system to reduce the impact of different light conditions. (3) Three individual two-stream networks combined with attention mechanism are designed for each feature to extract temporal information. (4) The outputs of the three sub-networks will be concatenated and sent to the fully-connected network, which judges the status of the driver. The drowsiness detection system is trained and evaluated on the famous Nation Tsing Hua University Driver Drowsiness Detection (NTHU-DDD) dataset and we obtain an accuracy of 94.46%, which outperforms most existing fatigue detection models.
翻译:潜伏驾驶是交通事故的一个主要原因,因此,许多先前的研究都侧重于对司机潜伏性检测,许多驱动因素已被考虑在内,用于检测疲劳症,并可能导致高度精确,但仍有一些严重的制约因素,例如大多数现有模型都对环境有危害;在本文件中,疲劳症检测被视为时间行动检测问题,而不是图像分类;拟议的检测系统可分为四个部分:(1) 将检测疲劳症检测和计算相应光学流的关键特征的检测驱动图像关键部分本地化;(2) 在我们的系统中使用对比有限适应性直方图平衡(CLAHE),以减少不同光度条件的影响。(3) 三个单独的双流网络与关注机制相结合,为每个特征设计了吸引时间信息的注意机制。(4) 三个子网络的输出结果将被连接并发送到完全连接的网络,由该网络来判断驱动器的状况。对潮流检测系统进行了培训和评价,用于著名的国家潮湿度大学司机Drowsurity检测(NTHUTH-DDDD)数据集成,我们获得了最精确的检测力 %。