AI RESEARCH
A generalised pre-training strategy for deep learning networks in semantic segmentation of remotely sensed images
arXiv CS.CV
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ArXi:2604.27704v1 Announce Type: new In the segmentation of remotely sensed images, deep learning models are typically pre-trained using large image databases like ImageNet before fine-tuned on domain-specific datasets. However, the performance of these fine-tuned models is often hindered by the large domain gaps (i.e., differences in scenes and modalities) between ImageNet's images and remotely sensed images being processed. Therefore, many researchers have undertaken efforts to establish large-scale domain-specific image datasets for pre-