Edge-guided and Class-balanced Active Learning for Semantic Segmentation of Aerial Images
Lianlei Shan, Weiqiang Wang, Ke Lv, Bin Luo

TL;DR
This paper introduces an edge-guided, class-balanced active learning approach for aerial image segmentation, significantly reducing annotation costs and improving performance on benchmark datasets.
Contribution
It proposes a novel edge-guided labeling unit and comprehensive class balance strategies, addressing specific challenges in aerial image segmentation for active learning.
Findings
Achieves over 11.2% performance improvement on benchmarks.
Addresses class imbalance at multiple stages of active learning.
Establishes a strong benchmark for future aerial image segmentation research.
Abstract
Semantic segmentation requires pixel-level annotation, which is time-consuming. Active Learning (AL) is a promising method for reducing data annotation costs. Due to the gap between aerial and natural images, the previous AL methods are not ideal, mainly caused by unreasonable labeling units and the neglect of class imbalance. Previous labeling units are based on images or regions, which does not consider the characteristics of segmentation tasks and aerial images, i.e., the segmentation network often makes mistakes in the edge region, and the edge of aerial images is often interlaced and irregular. Therefore, an edge-guided labeling unit is proposed and supplemented as the new unit. On the other hand, the class imbalance is severe, manifested in two aspects: the aerial image is seriously imbalanced, and the AL strategy does not fully consider the class balance. Both seriously affect…
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Taxonomy
TopicsAdvanced Image and Video Retrieval Techniques · Robotics and Sensor-Based Localization · Advanced Vision and Imaging
