This paper focuses on the challenge of driver safety on the road and presents a novel system for driver drowsiness detection. In this system, to detect the falling sleep state of the driver as the sign of drowsiness, Convolutional Neural Networks (CNN) are used with regarding the two goals of real-time application, including high accuracy and fastness. Three networks introduced as a potential network for eye status classifcation in which one of them is a Fully Designed Neural Network (FD-NN) and others use Transfer Learning in VGG16 and VGG19 with extra designed layers (TL-VGG). Lack of an available and accurate eye dataset strongly feels in the area of eye closure detection. Therefore, a new comprehensive dataset proposed. The experimental results show the high accuracy and low computational complexity of the eye closure estimation and the ability of the proposed framework on drowsiness detection.
翻译:本文侧重于道路驾驶员安全的挑战,并提出了一个新的驾驶员潜伏检测系统。在这个系统中,为了检测驾驶员作为沉睡迹象的沉睡状态,在实时应用的两个目标(包括高精度和快度)方面使用了进化神经网络(CNN),将三个网络作为眼状态分类的潜在网络,其中一个网络是完全设计的神经网络(FD-NN),另一个网络在VGG16和VGG19中使用了额外设计的层(TL-VGG)的转移学习。在眼闭检查领域,缺少可用和准确的眼部数据组。因此,提出了一个新的综合数据集。实验结果显示眼闭估计的高度准确性和低计算复杂性,以及拟议的沉睡探测框架的能力。