ARM: A Confidence-Based Adversarial Reweighting Module for Coarse Semantic Segmentation
Coarsely-labeled semantic segmentation annotations are easy to obtain, but therefore bear the risk of losing edge details and introducing background pixels. Impeded by the inherent noise, existing coarse annotations are only taken as a bonus for model pre-training. In this paper, we try to exploit t...
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Zusammenfassung: | Coarsely-labeled semantic segmentation annotations are easy to obtain, but
therefore bear the risk of losing edge details and introducing background
pixels. Impeded by the inherent noise, existing coarse annotations are only
taken as a bonus for model pre-training. In this paper, we try to exploit their
potentials with a confidence-based reweighting strategy. To expand, loss-based
reweighting strategies usually take the high loss value to identify two
completely different types of pixels, namely, valuable pixels in noise-free
annotations and mislabeled pixels in noisy annotations. This makes it
impossible to perform two tasks of mining valuable pixels and suppressing
mislabeled pixels at the same time. However, with the help of the prediction
confidence, we successfully solve this dilemma and simultaneously perform two
subtasks with a single reweighting strategy. Furthermore, we generalize this
strategy into an Adversarial Reweighting Module (ARM) and prove its convergence
strictly. Experiments on standard datasets shows our ARM can bring consistent
improvements for both coarse annotations and fine annotations. Specifically,
built on top of DeepLabv3+, ARM improves the mIoU on the coarsely-labeled
Cityscapes by a considerable margin and increases the mIoU on the ADE20K
dataset to 47.50. |
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DOI: | 10.48550/arxiv.2009.05205 |