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Auteurs principaux: Ye, Hui, Chen, Haodong, Chen, Xiaoming, Chung, Vera
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2411.09344
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author Ye, Hui
Chen, Haodong
Chen, Xiaoming
Chung, Vera
author_facet Ye, Hui
Chen, Haodong
Chen, Xiaoming
Chung, Vera
contents Remote sensing (RS) involves the acquisition of data about objects or areas from a distance, primarily to monitor environmental changes, manage resources, and support planning and disaster response. A significant challenge in RS segmentation is the scarcity of high-quality labeled images due to the diversity and complexity of RS image, which makes pixel-level annotation difficult and hinders the development of effective supervised segmentation algorithms. To solve this problem, we propose Adaptively Augmented Consistency Learning (AACL), a semi-supervised segmentation framework designed to enhances RS segmentation accuracy under condictions of limited labeled data. AACL extracts additional information embedded in unlabeled images through the use of Uniform Strength Augmentation (USAug) and Adaptive Cut-Mix (AdaCM). Evaluations across various RS datasets demonstrate that AACL achieves competitive performance in semi-supervised segmentation, showing up to a 20% improvement in specific categories and 2% increase in overall performance compared to state-of-the-art frameworks.
format Preprint
id arxiv_https___arxiv_org_abs_2411_09344
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Adaptively Augmented Consistency Learning: A Semi-supervised Segmentation Framework for Remote Sensing
Ye, Hui
Chen, Haodong
Chen, Xiaoming
Chung, Vera
Computer Vision and Pattern Recognition
Remote sensing (RS) involves the acquisition of data about objects or areas from a distance, primarily to monitor environmental changes, manage resources, and support planning and disaster response. A significant challenge in RS segmentation is the scarcity of high-quality labeled images due to the diversity and complexity of RS image, which makes pixel-level annotation difficult and hinders the development of effective supervised segmentation algorithms. To solve this problem, we propose Adaptively Augmented Consistency Learning (AACL), a semi-supervised segmentation framework designed to enhances RS segmentation accuracy under condictions of limited labeled data. AACL extracts additional information embedded in unlabeled images through the use of Uniform Strength Augmentation (USAug) and Adaptive Cut-Mix (AdaCM). Evaluations across various RS datasets demonstrate that AACL achieves competitive performance in semi-supervised segmentation, showing up to a 20% improvement in specific categories and 2% increase in overall performance compared to state-of-the-art frameworks.
title Adaptively Augmented Consistency Learning: A Semi-supervised Segmentation Framework for Remote Sensing
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2411.09344