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Multi-domain semantic segmentation with overlapping labels

About

Deep supervised models have an unprecedented capacity to absorb large quantities of training data. Hence, training on many datasets becomes a method of choice towards graceful degradation in unusual scenes. Unfortunately, different datasets often use incompatible labels. For instance, the Cityscapes road class subsumes all driving surfaces, while Vistas defines separate classes for road markings, manholes etc. We address this challenge by proposing a principled method for seamless learning on datasets with overlapping classes based on partial labels and probabilistic loss. Our method achieves competitive within-dataset and cross-dataset generalization, as well as ability to learn visual concepts which are not separately labeled in any of the training datasets. Experiments reveal competitive or state-of-the-art performance on two multi-domain dataset collections and on the WildDash 2 benchmark.

Petra Bevandi\'c, Marin Or\v{s}i\'c, Ivan Grubi\v{s}i\'c, Josip \v{S}ari\'c, Sini\v{s}a \v{S}egvi\'c• 2021

Related benchmarks

TaskDatasetResultRank
Semantic segmentationADE20K
mIoU31
936
Semantic segmentationCityscapes
mIoU72.6
578
Semantic segmentationCOCO
mIoU35.4
96
Semantic segmentationBDD100K
mIoU58.5
78
Semantic segmentationMapillary
mIoU39.1
75
Semantic segmentationWildDash bench (test)
mIoU Meta Avg (cla)46.8
19
Semantic segmentationIDD
mIoU54.4
15
Semantic segmentationKITTI Semantics (test)
mIoU Class68.89
8
Semantic segmentationSUN
mIoU41.7
7
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