English

Visual Semantic Segmentation Based on Few/Zero-Shot Learning: An Overview

Computer Vision and Pattern Recognition 2022-11-16 v1

Abstract

Visual semantic segmentation aims at separating a visual sample into diverse blocks with specific semantic attributes and identifying the category for each block, and it plays a crucial role in environmental perception. Conventional learning-based visual semantic segmentation approaches count heavily on large-scale training data with dense annotations and consistently fail to estimate accurate semantic labels for unseen categories. This obstruction spurs a craze for studying visual semantic segmentation with the assistance of few/zero-shot learning. The emergence and rapid progress of few/zero-shot visual semantic segmentation make it possible to learn unseen-category from a few labeled or zero-labeled samples, which advances the extension to practical applications. Therefore, this paper focuses on the recently published few/zero-shot visual semantic segmentation methods varying from 2D to 3D space and explores the commonalities and discrepancies of technical settlements under different segmentation circumstances. Specifically, the preliminaries on few/zero-shot visual semantic segmentation, including the problem definitions, typical datasets, and technical remedies, are briefly reviewed and discussed. Moreover, three typical instantiations are involved to uncover the interactions of few/zero-shot learning with visual semantic segmentation, including image semantic segmentation, video object segmentation, and 3D segmentation. Finally, the future challenges of few/zero-shot visual semantic segmentation are discussed.

Keywords

Cite

@article{arxiv.2211.08352,
  title  = {Visual Semantic Segmentation Based on Few/Zero-Shot Learning: An Overview},
  author = {Wenqi Ren and Yang Tang and Qiyu Sun and Chaoqiang Zhao and Qing-Long Han},
  journal= {arXiv preprint arXiv:2211.08352},
  year   = {2022}
}
R2 v1 2026-06-28T05:58:21.459Z