Click on the below button to generate a random picture from Mapillary
dataset, and to display the corresponding label predictions.
Raw image
Ground-truth
Prediction
Training procedure
A U-net model has been
trained during 20 epochs with a set of 18000 training images, with a
validation procedure involving 2000 images at the end of each training
epoch.
Dataset description
The original Mapillary
dataset contains 65 labels. For a sake of clarity, a lighter classification
with only 13 labels has been built up:
animal: ground animal or birds
construction (barrier): curbs, fences, guard rails and other barriers
construction (flat): ground areas like roads, parkings, bike lanes...
construction (structure): buildings, bridges, tunnels