English

Semantic Segmentation In-the-Wild Without Seeing Any Segmentation Examples

Computer Vision and Pattern Recognition 2021-12-07 v1

Abstract

Semantic segmentation is a key computer vision task that has been actively researched for decades. In recent years, supervised methods have reached unprecedented accuracy, however they require many pixel-level annotations for every new class category which is very time-consuming and expensive. Additionally, the ability of current semantic segmentation networks to handle a large number of categories is limited. That means that images containing rare class categories are unlikely to be well segmented by current methods. In this paper we propose a novel approach for creating semantic segmentation masks for every object, without the need for training segmentation networks or seeing any segmentation masks. Our method takes as input the image-level labels of the class categories present in the image; they can be obtained automatically or manually. We utilize a vision-language embedding model (specifically CLIP) to create a rough segmentation map for each class, using model interpretability methods. We refine the maps using a test-time augmentation technique. The output of this stage provides pixel-level pseudo-labels, instead of the manual pixel-level labels required by supervised methods. Given the pseudo-labels, we utilize single-image segmentation techniques to obtain high-quality output segmentation masks. Our method is shown quantitatively and qualitatively to outperform methods that use a similar amount of supervision. Our results are particularly remarkable for images containing rare categories.

Keywords

Cite

@article{arxiv.2112.03185,
  title  = {Semantic Segmentation In-the-Wild Without Seeing Any Segmentation Examples},
  author = {Nir Zabari and Yedid Hoshen},
  journal= {arXiv preprint arXiv:2112.03185},
  year   = {2021}
}
R2 v1 2026-06-24T08:06:18.529Z