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Jaroenchai, Nattapon; Wang, Shaowen; Stanislawski, Lawrence V; Shavers, Ethan; Jiang, Zhe; Sagan, Vasit; Usery, E Lynn (, Environmental Modelling & Software)Ames, Daniel P (Ed.)Hydrological streamline delineation is critical for effective environmental management, influencing agriculture sustainability, river dynamics, watershed planning, and more. This study develops a novel approach to combining transfer learning with convolutional neural networks that capitalize on image-based pre-trained models to improve the accuracy and transferability of streamline delineation. We evaluate the performance of eleven image-based pre-trained models and a baseline model using datasets from Rowan County, North Carolina, and Covington River, Virginia in the USA. Our results demonstrate that when models are adapted to a new area, the fine-tuned ImageNet pre-trained model exhibits superior predictive accuracy, markedly higher than the models trained from scratch or those only fine-tuned on the same area. Moreover, the pre-trained model achieves better smoothness and connectivity between classified streamline channels. These findings underline the effectiveness of transfer learning in enhancing the delineation of hydrological streamlines across varied geographies, offering a scalable solution for accurate and efficient environmental modelling.more » « less
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Xu, Zewei; Wang, Shaowen; Stanislawski, Lawrence V.; Jiang, Zhe; Jaroenchai, Nattapon; Sainju, Arpan Man; Shavers, Ethan; Usery, E. Lynn; Chen, Li; Li, Zhiyu; et al (, Environmental Modelling & Software)null (Ed.)
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