Ephemeral gully recognition and accuracy evaluation using deep learning in the hilly and gully region of the Loess Plateau in China  被引量:4

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作  者:Boyang Liu Biao Zhang Hao Feng Shufang Wu Jiangtao Yang Yufeng Zou Kadambot H.M.Siddique 

机构地区:[1]Key Laboratory of Agricultural Soil and Water Engineering in Arid and Semiarid Areas,Ministry of Education,Northwest A&F University,Yangling,712100,China [2]Institute of Water Saving Agriculture in Arid Areas of China,Northwest A&F University,Yangling,712100,China [3]College of Water Resources and Architectural Engineering,Northwest A&F University,Yangling,712100,China [4]Department of Foreign Languages,Northwest A&F University,Yangling,712100,China [5]The UWA Institute of Agriculture and School of Agriculture&Environment,The University of Western Australia,Perth,WA,6001,Australia

出  处:《International Soil and Water Conservation Research》2022年第3期371-381,共11页国际水土保持研究(英文)

基  金:This research was supported by the National Natural Science Foundation of China(41977064);the Fundamental Research Funds for the Central Universities(2452021158;2452021036);the 111 Project of the Ministry of Education and the State Administration of Foreign Experts Affairs(B12007)。

摘  要:Ephemeral gullies are widely distributed in the hilly and gully region of the Loess Plateau and play a unique role in the slope gully erosion system.Rapid and accurate identification of ephemeral gullies impacts the distribution law and development trend of soil erosion on the Loess Plateau.Deep learning algorithms can quickly and accurately process large data samples that recognize ephemeral gullies from remote sensing images.Here,we investigated ephemeral gullies in the Zhoutungou watershed in the hilly and gully region of the Loess Plateau in China using satellite and unmanned aerial vehicle images and combined a deep learning image semantic segmentation model to realize automatic recognition and feature extraction.Using Accuracy,Precision,Recall,F1value,and AUC,we compared the ephemeral gully recognition results and accuracy evaluation of U-Net,R2U-Net,and SegNet image semantic segmentation models.The SegNet model was ranked first,followed by the R2U-Net and U-Net models,for ephemeral gully recognition in the hilly and gully region of the Loess Plateau.The ephemeral gully length and width between predicted and measured values had RMSE values of 6.78 m and 0.50 m,respectively,indicating that the model has an excellent recognition effect.This study identified a fast and accurate method for ephemeral gully recognition in the hilly and gully region of the Loess Plateau based on remote sensing images to provide an academic reference and practical guidance for soil erosion monitoring and slope and gully management in the Loess Plateau region.

关 键 词:Deep learning Remote sensing image Ephemeral gully recognition Loess plateau Image semantic segmentation Accuracy evaluation 

分 类 号:S157[农业科学—土壤学]

 

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