@inproceedings{d9864d85b113487db4fe487399ea1902,
title = "MCSNet:Multi-Scene Crack Segmentation Network Based on Few-Shot Learning",
abstract = "Crack segmentation networks heavily rely on large amounts of high-quality annotated images as training data. However, image labeling for pixel-wise is tedious and costly. Moreover, networks trained on crack images from some specific scenes struggle to generalize to other scenes. This paper proposes a few-shot segmentation approach for crack segmentation which performs highly accurate segmentation with only a few annotated images and few-shot learning enables network to segment multi-scene cracks. The network consists of an adjusted spatial convolution which extracts features of narrow target better, and a feature fusion module which enriches query features with multi-level and multi-source features. Additionally, an attention mechanism is incorporated to provide guidance for the query image segmentation. Extensive experiments on the simple public crack datasets such as Crack500, DeepCrack and a more complex self-collected dataset of concrete surface cracks demonstrate that the network outperforms other mainstream few-shot segmentation models.",
keywords = "attention mechanism, crack segmentation, feature fusion, few-shot segmentation",
author = "Yang Liu and Xiangyang Xu and Zhongjian Dai and Yan Zhao and Jingxin Shi",
note = "Publisher Copyright: {\textcopyright} 2023 IEEE.; 2023 China Automation Congress, CAC 2023 ; Conference date: 17-11-2023 Through 19-11-2023",
year = "2023",
doi = "10.1109/CAC59555.2023.10450407",
language = "English",
series = "Proceedings - 2023 China Automation Congress, CAC 2023",
publisher = "Institute of Electrical and Electronics Engineers Inc.",
pages = "3633--3638",
booktitle = "Proceedings - 2023 China Automation Congress, CAC 2023",
address = "United States",
}