Deep ResNet 18 and enhanced firefly optimization algorithm for on-road vehicle driver drowsiness detection

S. Nandyal, Sharanabasappa Sharanabasappa
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Abstract

The driver drowsiness detection (DDD) technology is based on vehicle safety, and this system prevents many accidents and deaths that occur due to driver drowsiness. As a result, it is monitored and detected when vehicle drivers become drowsy. The DDD method, which is aided by AlexNet and deep learning models, has limitations such as vanishing gradients and overfitting issues as the depth of the model increases. The enhanced firefly optimisation algorithm has solved the problem of lower optimisation exploration. The National Tsing Hua University Driver Drowsiness Detection (NTHU-DDD) dataset’s input image contains individual groups of female and male drivers of various vehicles. The Min-max normalisation method is a general method for normalising data. The convolutional neural network (CNN) is used to extract features from input images and images classified by the neural network. ResNet 18 refers to the deepest of the convolutional neural network’s 18 layers. A network of pre-trained models can be used to classify the model classified by the 1000 image objects. The state-of-the-art Hierarchical Deep Drowsiness Detection (HDDD) model with Support Vector Machine (SVM) assistance has an effective high dimensional space. The CNN-EFF-ResNet 18 models have a high accuracy of 91.3%, while the HDDD method has a higher accuracy of 87.19% than the ensemble and Pyramid Multi-level Deep Belief (PMLDB) methods in DDD.
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用于道路车辆驾驶员昏睡检测的深度 ResNet 18 和增强型萤火虫优化算法
驾驶员昏昏欲睡检测(DDD)技术以车辆安全为基础,该系统可防止许多因驾驶员昏昏欲睡而导致的事故和死亡。因此,当车辆驾驶员打瞌睡时,它就会被监测和检测到。借助 AlexNet 和深度学习模型的 DDD 方法存在一些局限性,例如随着模型深度的增加,会出现梯度消失和过拟合问题。增强型萤火虫优化算法解决了优化探索度较低的问题。清华大学驾驶员瞌睡检测(NTHU-DDD)数据集的输入图像包含不同车辆的男女驾驶员个体组。最小-最大归一化方法是一种对数据进行归一化处理的通用方法。卷积神经网络(CNN)用于从输入图像中提取特征,并通过神经网络对图像进行分类。ResNet 18 指的是卷积神经网络 18 层中最深的一层。预训练模型网络可用于对由 1000 个图像对象分类的模型进行分类。采用支持向量机(SVM)辅助的最先进的分层深度昏昏欲睡检测(HDDD)模型具有有效的高维空间。CNN-EFF-ResNet 18 模型的准确率高达 91.3%,而 HDDD 方法的准确率为 87.19%,高于 DDD 中的集合方法和金字塔多层次深度信念(PMLDB)方法。
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