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VisNet: Deep Convolutional Neural Networks for Forecasting Atmospheric Visibility
2019
Sensors
Visibility is a complex phenomenon inspired by emissions and air pollutants or by factors, including sunlight, humidity, temperature, and time, which decrease the clarity of what is visible through the atmosphere. This paper provides a detailed overview of the state-of-the-art contributions in relation to visibility estimation under various foggy weather conditions. We propose VisNet, which is a new approach based on deep integrated convolutional neural networks for the estimation of visibility
doi:10.3390/s19061343
fatcat:imdovjvezfcjvhlz6mk2gytoqy