StreetSurfaceVis: a dataset of street-level imagery with annotations of road surface type and quality

StreetSurfaceVis StreetSurfaceVis is an image dataset containing 9,122 street-level images from Germany with labels on road surface type and quality. The CSV file streetSurfaceVis_v1_0.csv contains all image metadata and four folders contain the image files. All images are available in four differen...

Ausführliche Beschreibung

Gespeichert in:
Bibliographische Detailangaben
Hauptverfasser: Kapp, Alexandra, Hoffmann, Edith, Weigmann, Esther, Mihaljevic, Helena
Format: Dataset
Sprache:eng
Schlagworte:
Online-Zugang:Volltext bestellen
Tags: Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
Beschreibung
Zusammenfassung:StreetSurfaceVis StreetSurfaceVis is an image dataset containing 9,122 street-level images from Germany with labels on road surface type and quality. The CSV file streetSurfaceVis_v1_0.csv contains all image metadata and four folders contain the image files. All images are available in four different sizes, based on the image width, in 256px, 1024px, 2048px and the original size.Folders containing the images are named according to the respective image size. Image files are named based on the mapillary_image_id. You can find the corresponding preprint paper here:  StreetSurfaceVis: a dataset of crowdsourced street-level imagery with semi-automated annotations of road surface type and quality   Image metadata Each CSV record contains information about one street-level image with the following attributes: mapillary_image_id: ID provided by Mapillary (see information below on Mapillary) user_id: Mapillary user ID of contributor user_name: Mapillary user name of contributor captured_at: timestamp, capture time of image longitude, latitude: location the image was taken at train: Suggestion to split train and test data. `True` for train data and `False` for test data. Test data contains data from 5 cities which are excluded in the training data. surface_type: Surface type of the road in the focal area (the center of the lower image half) of the image. Possible values: asphalt, concrete, paving_stones, sett, unpaved surface_quality: Surface quality of the road in the focal area of the image. Possible values: (1) excellent, (2) good, (3) intermediate, (4) bad, (5) very bad (see the attached Labeling Guide document for details)   Image source Images are obtained from Mapillary, a crowd-sourcing plattform for street-level imagery. More metadata about each image can be obtained via the Mapillary API . User-generated images are shared by Mapillary under the CC-BY-SA License. For each image, the dataset contains the mapillary_image_id and user_name. You can access user information on the Mapillary website by https://www.mapillary.com/app/user/ and image information by https://www.mapillary.com/app/?focus=photo&pKey= If you use the provided images, please adhere to the terms of use of Mapillary.   Instances per class Total number of images: 9,122   excellent good intermediate bad very bad asphalt 971 1697 821 246 - concrete 314 350 250 58 - paving stones 385 1063 519 70 - sett - 129 694 540 - unpaved - - 326 387 303   For modeling, we recommend using a train-test split w
DOI:10.5281/zenodo.11449976