Deep Residual Learning-Based Convolutional Variational Autoencoder For Driver Fatigue Classification

Q3 Engineering
Sameera Adhikari, Senaka Amarakeerthi
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引用次数: 0

Abstract

Driving under the influence of fatigue often results in uncontrollable vehicle dynamics, which causes severe and fatal accidents. Therefore, early warning on the fatigue onset is crucial to avoid occurrences of such kind of a disaster. In this paper, the authors have investigated a novel semi-supervised convolutional variational autoencoder-based classification approach to classify the state of the driver. A convolutional variational autoencoder is a generative network. The authors have proposed a discriminative model using convolutional variational autoencoders and residual learning. This approach calculates an intermediate loss base on deep features of the network in addition to the label information in training. The loss obtained by this method helps the training to be more effective on the model and leads to better accuracy in driver fatigue classification.  The trained model has managed to classify driver fatigue with higher accuracy (97%) than the other successful models taken into comparison, proving that the proposed method is more practical for computing classification loss for driver fatigue to currently available methods.
基于深度残差学习的卷积变分自编码器驾驶员疲劳分类
疲劳状态下的驾驶往往会导致车辆动力学不可控,从而造成严重和致命的事故。因此,对疲劳发作的早期预警对于避免此类灾难的发生至关重要。在本文中,作者研究了一种基于半监督卷积变分自编码器的分类方法来对驾驶员的状态进行分类。卷积变分自编码器是一个生成网络。作者提出了一种基于卷积变分自编码器和残差学习的判别模型。该方法除了训练中的标签信息外,还基于网络的深度特征计算中间损失。该方法得到的损失有助于对模型进行更有效的训练,从而提高驾驶员疲劳分类的准确性。训练后的模型对驾驶员疲劳分类的准确率(97%)高于其他成功的模型进行比较,证明本文方法在计算驾驶员疲劳分类损失方面比现有方法更实用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Advances in Technology Innovation
Advances in Technology Innovation Energy-Energy Engineering and Power Technology
CiteScore
1.90
自引率
0.00%
发文量
18
审稿时长
12 weeks
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