2023
DOI: 10.1155/2023/1456971
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Road‐Type Classification with Deep AutoEncoder

Abstract: Machine learning algorithms are among the driving forces towards the success of intelligent road network systems design. Such algorithms allow for the design of systems that provide safe road usage, efficient infrastructure, and traffic flow management. One such application of machine learning in intelligent road networks is classifying different road network types that provide useful traffic information to road users. We propose a deep autoencoder model for representation learning to classify road network typ… Show more

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