Domain Adaptation from Generated Multi-Weather Images for Unsupervised Maritime Object Classification
- URL: http://arxiv.org/abs/2501.15503v1
- Date: Sun, 26 Jan 2025 12:27:54 GMT
- Title: Domain Adaptation from Generated Multi-Weather Images for Unsupervised Maritime Object Classification
- Authors: Dan Song, Shumeng Huo, Wenhui Li, Lanjun Wang, Chao Xue, An-An Liu,
- Abstract summary: We construct a dataset named AIMO with diverse weather conditions and balanced object categories.
We propose a novel domain adaptation approach that leverages AIMO (source domain) to address the problem of limited labeled data.
Experimental results show that the proposed method significantly improves the classification accuracy.
- Score: 34.59086771834456
- License:
- Abstract: The classification and recognition of maritime objects are crucial for enhancing maritime safety, monitoring, and intelligent sea environment prediction. However, existing unsupervised methods for maritime object classification often struggle with the long-tail data distributions in both object categories and weather conditions. In this paper, we construct a dataset named AIMO produced by large-scale generative models with diverse weather conditions and balanced object categories, and collect a dataset named RMO with real-world images where long-tail issue exists. We propose a novel domain adaptation approach that leverages AIMO (source domain) to address the problem of limited labeled data, unbalanced distribution and domain shift in RMO (target domain), and enhance the generalization of source features with the Vision-Language Models such as CLIP. Experimental results shows that the proposed method significantly improves the classification accuracy, particularly for samples within rare object categories and weather conditions. Datasets and codes will be publicly available at https://github.com/honoria0204/AIMO.
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