CVNov 13, 2022

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

arXiv:2211.08352v168 citationsh-index: 55
Originality Synthesis-oriented
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It tackles the challenge of reducing reliance on large annotated datasets for segmentation, which is crucial for practical deployment in fields like autonomous driving and robotics, but it is an incremental review paper.

This paper provides an overview of few/zero-shot learning methods for visual semantic segmentation, addressing the problem of segmenting unseen categories with limited or no labeled data, and reviews recent advancements from 2D to 3D applications.

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.

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