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Evaluation Visualization (1)

New: RailSem19 dataset for semantic rail scene understanding.
Results of the 2018 CVPR challenge can be seen here: semantic / instance segmentation

Excerpt from submitted algorithm results compared to WildDash's Ground Truth. Label images use the standard cityscapes color coding (white is used for unknown labels; e.g. ScanNet); difference images show correct pixels in green, pixels with incorrect class but correct category in yellow, and incorrect pixels in red. All shown frames are part of WildDash's public validation frames and have no direct impact on the leaderboard. However, the order in the list corresponds to the leaderboard order.

Frames visualized:
  • cn0000; Chinese rural area with animals on the road
  • fi0009; Winter scene from Finland with some snowing
  • in0000; Indian suburbs with a dust cloud
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Cached Dec. 13, 2019, 8:59 a.m. UTC+0