Single-Stage Semantic Segmentation from Image Labels
Recent years have seen a rapid growth in new approaches improving the accuracy of semantic segmentation in a weakly supervised setting, i.e. with only image-level labels available for training. However, this has come at the cost of increased model complexity and sophisticated multi-stage training pr...
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Zusammenfassung: | Recent years have seen a rapid growth in new approaches improving the
accuracy of semantic segmentation in a weakly supervised setting, i.e. with
only image-level labels available for training. However, this has come at the
cost of increased model complexity and sophisticated multi-stage training
procedures. This is in contrast to earlier work that used only a single stage
$-$ training one segmentation network on image labels $-$ which was abandoned
due to inferior segmentation accuracy. In this work, we first define three
desirable properties of a weakly supervised method: local consistency, semantic
fidelity, and completeness. Using these properties as guidelines, we then
develop a segmentation-based network model and a self-supervised training
scheme to train for semantic masks from image-level annotations in a single
stage. We show that despite its simplicity, our method achieves results that
are competitive with significantly more complex pipelines, substantially
outperforming earlier single-stage methods. |
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DOI: | 10.48550/arxiv.2005.08104 |