Around 40 percent of accidents related to driving on highways in India occur due to the driver falling asleep behind the steering wheel. Several types of research are ongoing to detect driver drowsiness but they suffer from the complexity and cost of the models. In this paper, SleepyWheels a revolutionary method that uses a lightweight neural network in conjunction with facial landmark identification is proposed to identify driver fatigue in real time. SleepyWheels is successful in a wide range of test scenarios, including the lack of facial characteristics while covering the eye or mouth, the drivers varying skin tones, camera placements, and observational angles. It can work well when emulated to real time systems. SleepyWheels utilized EfficientNetV2 and a facial landmark detector for identifying drowsiness detection. The model is trained on a specially created dataset on driver sleepiness and it achieves an accuracy of 97 percent. The model is lightweight hence it can be further deployed as a mobile application for various platforms.
翻译:在印度,大约40%的与高速公路上驾驶有关的事故是由于司机在方向盘后沉睡而发生的。有几种类型的研究正在进行中,以检测驾驶员的疲倦程度,但他们承受着模型的复杂性和成本。在本论文中,沉睡Wheels是一种革命性的方法,使用轻量神经网络以及面部标志性识别,以实时识别驾驶员疲劳症。沉睡Wheels在一系列广泛的测试情景中非常成功,其中包括在遮盖眼部或嘴部时缺乏面部特征,驾驶员的皮肤与口部不同,摄像头布置和观察角度不同。在模仿实时时间系统时,它可以很好地发挥作用。沉睡Wheels使用了高效的NetV2 和一个面部标志性检测器来识别沉睡症。该模型是专门制作的关于驾驶员的数据集的培训,其精确度达到97%。模型是轻度的,因此可以进一步作为各种平台的移动应用。