Adaptive Fuzzy Positive Learning for Annotation-Scarce Semantic Segmentation

Pengchong Qiao, Yu Wang, Chang Liu, Lei Shang, Baigui Sun, Zhennan Wang, Xiawu Zheng, Rongrong Ji, Jie Chen*

*此作品的通讯作者

科研成果: 期刊稿件文章同行评审

摘要

Annotation-scarce semantic segmentation aims to obtain meaningful pixel-level discrimination with scarce or even no manual annotations, of which the crux is how to utilize unlabeled data by pseudo-label learning. Typical works focus on ameliorating the error-prone pseudo-labeling, e.g., only utilizing high-confidence pseudo labels and filtering low-confidence ones out. But we think differently and resort to exhausting informative semantics from multiple probably correct candidate labels. This brings our method the ability to learn more accurately even though pseudo labels are unreliable. In this paper, we propose Adaptive Fuzzy Positive Learning (A-FPL) for correctly learning unlabeled data in a plug-and-play fashion, targeting adaptively encouraging fuzzy positive predictions and suppressing highly probable negatives. Specifically, A-FPL comprises two main components: (1) Fuzzy positive assignment (FPA) that adaptively assigns fuzzy positive labels to each pixel, while ensuring their quality through a T-value adaption algorithm (2) Fuzzy positive regularization (FPR) that restricts the predictions of fuzzy positive categories to be larger than those of negative categories. Being conceptually simple yet practically effective, A-FPL remarkably alleviates interference from wrong pseudo labels, progressively refining semantic discrimination. Theoretical analysis and extensive experiments on various training settings with consistent performance gain justify the superiority of our approach. Codes are at A-FPL.

源语言英语
期刊International Journal of Computer Vision
DOI
出版状态已接受/待刊 - 2024
已对外发布

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引用此

Qiao, P., Wang, Y., Liu, C., Shang, L., Sun, B., Wang, Z., Zheng, X., Ji, R., & Chen, J. (已接受/印刷中). Adaptive Fuzzy Positive Learning for Annotation-Scarce Semantic Segmentation. International Journal of Computer Vision. https://doi.org/10.1007/s11263-024-02217-1