AI Article Synopsis

  • Improving boundary segmentation in semantic segmentation is challenging due to unclear boundary cues in feature spaces of existing methods.
  • The proposed conditional boundary loss (CBL) focuses on optimizing each boundary pixel based on its surrounding neighbors, enhancing the accuracy of boundary results while maintaining separation between classes.
  • Extensive experiments on datasets like ADE20K, Cityscapes, and Pascal Context show that integrating CBL into popular segmentation networks significantly boosts their performance in terms of mean Intersection over Union (mIoU) and boundary F-score.

Article Abstract

Improving boundary segmentation results has recently attracted increasing attention in the field of semantic segmentation. Since existing popular methods usually exploit the long-range context, the boundary cues are obscure in the feature space, leading to poor boundary results. In this paper, we propose a novel conditional boundary loss (CBL) for semantic segmentation to improve the performance of the boundaries. The CBL creates a unique optimization goal for each boundary pixel, conditioned on its surrounding neighbors. The conditional optimization of the CBL is easy yet effective. In contrast, most previous boundary-aware methods have difficult optimization goals or may cause potential conflicts with the semantic segmentation task. Specifically, the CBL enhances the intra-class consistency and inter-class difference, by pulling each boundary pixel closer to its unique local class center and pushing it away from its different-class neighbors. Moreover, the CBL filters out noisy and incorrect information to obtain precise boundaries, since only surrounding neighbors that are correctly classified participate in the loss calculation. Our loss is a plug-and-play solution that can be used to improve the boundary segmentation performance of any semantic segmentation network. We conduct extensive experiments on ADE20K, Cityscapes, and Pascal Context, and the results show that applying the CBL to various popular segmentation networks can significantly improve the mIoU and boundary F-score performance.

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Source
http://dx.doi.org/10.1109/TIP.2023.3290519DOI Listing

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