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Simpler Does It: Generating Semantic Labels with Objectness Guidance (2110.10335v1)

Published 20 Oct 2021 in cs.CV

Abstract: Existing weakly or semi-supervised semantic segmentation methods utilize image or box-level supervision to generate pseudo-labels for weakly labeled images. However, due to the lack of strong supervision, the generated pseudo-labels are often noisy near the object boundaries, which severely impacts the network's ability to learn strong representations. To address this problem, we present a novel framework that generates pseudo-labels for training images, which are then used to train a segmentation model. To generate pseudo-labels, we combine information from: (i) a class agnostic objectness network that learns to recognize object-like regions, and (ii) either image-level or bounding box annotations. We show the efficacy of our approach by demonstrating how the objectness network can naturally be leveraged to generate object-like regions for unseen categories. We then propose an end-to-end multi-task learning strategy, that jointly learns to segment semantics and objectness using the generated pseudo-labels. Extensive experiments demonstrate the high quality of our generated pseudo-labels and effectiveness of the proposed framework in a variety of domains. Our approach achieves better or competitive performance compared to existing weakly-supervised and semi-supervised methods.

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Authors (5)
  1. Md Amirul Islam (19 papers)
  2. Matthew Kowal (15 papers)
  3. Sen Jia (42 papers)
  4. Konstantinos G. Derpanis (48 papers)
  5. Neil D. B. Bruce (18 papers)
Citations (1)

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