DOMAIN ADAPTIVE SEMANTIC SEGMENTATION OF REMOTE SENSING IMAGES VIA SELF-TRAINING-BASED DUAL-LEVEL DATA AUGMENTATION

Domain Adaptive Semantic Segmentation of Remote Sensing Images via Self-Training-Based Dual-Level Data Augmentation

Domain Adaptive Semantic Segmentation of Remote Sensing Images via Self-Training-Based Dual-Level Data Augmentation

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Semantic segmentation models experience a significant performance degradation due to domain shifts between the source read more and target domains.This issue is particularly prevalent in remote sensing imagery, where a semantic segmentation model trained on images from one satellite is tested on images from another.Previous research has often overlooked the role of data augmentation in enhancing a model's adaptability to target domains.In contrast, this article proposes a novel self-training framework that incorporates data augmentation at both the input and feature levels, yielding excellent results.Specifically, we introduce a regularized online self-training framework that effectively addresses the challenges of overconfidence and class imbalance inherent in self-training.

Based on this framework, we implement two robust data augmentation strategies at the input and feature levels to facilitate the learning of cross-domain invariant knowledge.At the input level, we employ a large-scale domain mixing strategy, termed multidomain mixing, to enhance the model's generalization capability.At the feature level, we introduce masked feature augmentation, a masking-based perturbation technique applied to the semantic features of the target domain.This approach enhances the consistency of teacher–student network predictions in the target domain feature space, thereby improving the robustness of the model's recognition of target domain features.The integration of the proposed self-training framework with dual-level data augmentation culminates in our innovative self-training-based 355 maybelline fit me dual-level data augmentation (STDA) method.

Extensive experimental results on the ISPRS semantic segmentation benchmark demonstrate that STDA outperforms existing state-of-the-art methods, showcasing its effectiveness.

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