研究目的
To eliminate domain shift in semantic segmentation of urban areas by proposing an adversarial domain adaptation method with a domain similarity discriminator, enabling transfer of knowledge across different cities without the need for labeled data in the target domain.
研究成果
The proposed adversarial domain adaptation method with a domain similarity discriminator effectively reduces domain shift in semantic segmentation, outperforming competing methods across different cities, as demonstrated by higher mean IoU scores in experiments.
研究不足
The method may be limited by the specific datasets used (urban areas with certain spectral bands and resolutions), and the need for pre-training on source domains. Generalization to other types of images or domains is not tested.
1:Experimental Design and Method Selection:
The method uses an adversarial learning framework with a domain similarity discriminator based on a Siamese network to measure similarity between domains. It integrates this with a feature extractor and classifier from DeepLabV3 for semantic segmentation.
2:Sample Selection and Data Sources:
Datasets from three cities (ISPRS Vaihingen, ISPRS Postdam, and Beijing) are used, with images cropped into patches for training and testing.
3:List of Experimental Equipment and Materials:
A computer with PyTorch framework, DeepLabV3 model pre-trained on ImageNet.
4:Experimental Procedures and Operational Workflow:
Training involves iterative updates of the feature extractor, classifier, and discriminator using adversarial losses and auxiliary losses. Images are processed in batches, and performance is evaluated using Intersection over Union (IoU).
5:Data Analysis Methods:
IoU is calculated for semantic segmentation accuracy, comparing predictions to ground truth.
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