2022
DOI: 10.31357/ait.v2i3.5545
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Deep Residual Learning-Based Convolutional Variational Autoencoder For Driver Fatigue Classification

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 discriminati… Show more

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