Highlights A novel method to estimate the sun glare using Google Street View panoramas. Deep learning algorithm was used to estimate and map sun glare occurrence. With consideration all types of obstructions of sunlight in urban environment.

    Abstract The sun glare is one of the major environmental hazards that cause traffic accidents. Every year many traffic accidents are caused by sun glare in the United States. Providing accurate information about when and where sun glare happens would be helpful to prevent sun glare caused traffic accidents. In this study, we proposed to use the publicly accessible Google Street View (GSV) panorama images to estimate and predict the occurrence of sun glare. GSV images have view sight similar to drivers, which make GSV images suitable for estimating the visibility of sun glare to drivers. A recently developed convolutional neural network algorithm was used to segment GSV images and predict obstructions on sun glare. Based on the predicted obstructions for given locations, we further estimated the time windows of sun glare by calculating the sun positions and the relative angles between drivers and the sun for those locations. We conducted a case study in Cambridge, Massachusetts, USA. Results show that the method can predict the occurrence of sun glare precisely. The proposed method provides an important tool for people to deal with the sun glare and reduce the potential traffic accidents caused by the sun glare.


    Access

    Check access

    Check availability in my library

    Order at Subito €


    Export, share and cite



    Title :

    A novel method for predicting and mapping the occurrence of sun glare using Google Street View


    Contributors:
    Li, Xiaojiang (author) / Cai, Bill Yang (author) / Qiu, Waishan (author) / Zhao, Jinhua (author) / Ratti, Carlo (author)


    Publication date :

    2019-07-15


    Size :

    13 pages




    Type of media :

    Article (Journal)


    Type of material :

    Electronic Resource


    Language :

    English




    Google Street View is watching you

    Jahn, David | Online Contents | 2009


    Avoidance of glare in street traffic

    Furter, H.W. | Engineering Index Backfile | 1967


    The severity of pedestrian crashes: an analysis using Google Street View imagery

    Hanson, Christopher S. / Noland, Robert B. / Brown, Charles | Elsevier | 2013



    Using eye-tracking technology and Google street view to understand cyclists' perceptions

    Brazil, William / O'Dowd, Anthony / Caulfield, Brian | IEEE | 2017