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Multi-task learning on partially labeled datasets via invariant/equivariant semi-supervised learning

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We investigate the potential of invariant and equivariant semi-supervised learning for addressing the challenges of training multi-task models on partially labeled datasets with differently structured output tasks. Specifically, we use the popular FixMatch method for invariant semi-supervised learning and its equivariant extension Dense FixMatch. We evaluate their performance on the Cityscapes and BDD100K datasets in the context of the prevalent object detection and semantic segmentation tasks in computer vision. We consider varying sizes of the subsets annotated for each task and different overlaps among them. Our results for both invariant and equivariant semi-supervised learning outperform supervised baselines in most situations, with the most significant improvements observed when fewer labeled samples are available for a task and generally better results for the latter approach. Our study suggests that invariant/equivariant learning is a promising general direction for multi-task learning from limited labeled data.

Miquel Mart\'i i Rabad\'an, Alessandro Pieropan, Hossein Azizpour, Atsuto Maki• 2026

Related benchmarks

TaskDatasetResultRank
Semantic segmentationCityscapes
mIoU75.23
494
Object DetectionCityscapes
mAP35.2
136
Object DetectionBDD100K (val)
mAP26.77
71
Object DetectionCityscapes low-data regime (val)
mAP35.49
52
Semantic segmentationCityscapes low-data regime (val)
mIoU75.83
52
Semantic segmentationBDD100K Segmentation (val)
mIoU64.7
11
Object DetectionCityscapes (train extra)
mAP38.48
8
Object DetectionCityscapes sequence
mAP38.43
8
Semantic segmentationCityscapes (trainextra)
mIoU78.88
8
Semantic segmentationCityscapes sequence
mIoU78.61
8
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