CVJul 23, 2025

Exploring Spatial Diversity for Region-based Active Learning

arXiv:2507.17367v113 citationsh-index: 28IEEE Transactions on Image Processing
Originality Highly original
AI Analysis

This reduces annotation costs for semantic segmentation tasks, offering a practical improvement over existing methods.

The paper tackled the high annotation cost of semantic segmentation by proposing a region-based active learning framework that enforces local spatial diversity alongside traditional selection criteria, achieving 95% of fully supervised performance with only 5-9% of labeled pixels on Cityscapes and PASCAL VOC datasets.

State-of-the-art methods for semantic segmentation are based on deep neural networks trained on large-scale labeled datasets. Acquiring such datasets would incur large annotation costs, especially for dense pixel-level prediction tasks like semantic segmentation. We consider region-based active learning as a strategy to reduce annotation costs while maintaining high performance. In this setting, batches of informative image regions instead of entire images are selected for labeling. Importantly, we propose that enforcing local spatial diversity is beneficial for active learning in this case, and to incorporate spatial diversity along with the traditional active selection criterion, e.g., data sample uncertainty, in a unified optimization framework for region-based active learning. We apply this framework to the Cityscapes and PASCAL VOC datasets and demonstrate that the inclusion of spatial diversity effectively improves the performance of uncertainty-based and feature diversity-based active learning methods. Our framework achieves $95\%$ performance of fully supervised methods with only $5-9\%$ of the labeled pixels, outperforming all state-of-the-art region-based active learning methods for semantic segmentation.

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