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Automatic Identification of Driver Inattentiveness Using Convolutional Neural Networks

机译:使用卷积神经网络自动识别驾驶员不专注

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The safe driving and the safety of drivers as well as passengers and properties mostly depend on driver behaviour, such as the attention status of the driver. Driver inattentiveness such as drowsiness is the most extensive aspect of road accidents nowadays. For solving this, our research works have been focused on deep learning-based model testing and designing for classification purposes of driver drowsiness. Some multi-variant dataset was obtained together and self-labelled and divided into two classes (fatigue state and active state) with 9120 RGB frames, 50% was fatigue-related, and 50% was the active posture of the human. The training, validation checking, and testing ratio of data were 65%, 17%, 18% respectively. Here we have tested the LeNet-5 CNN architecture, and then designed a another convolutional neural network, and finally we have classified those images into fatigue and active state. Our proposed model got the highest accuracy of 93.57% and F1_score of 94% over the LeNet-5 architecture.
机译:安全驾驶和司机以及乘客和财产的安全主要取决于驾驶员的行为,如驾驶者的注意力状态。司机注意力不集中,如嗜睡是交通事故的最广泛的方面现在。为了解决这个,我们的研究工作一直集中在深学习型模型测试和设计为驾驶员困倦的分类目的。获得一些多变量数据集一起和自标记并分为两类(疲劳状态和激活状态)与9120个RGB帧,50%疲劳相关的,并且50%是人类的有效姿势。训练,验证检查和测试数据的比率分别为65%,17%,18%。在这里,我们已经测试了LeNet-5 CNN架构,然后设计一个其他的卷积神经网络,最后我们已分类这些图像成疲劳和激活状态。我们提出的模型得到了93.57%的最高精确度和在LeNet-5架构的94%F1_score。

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