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基于全卷积网络模型的高分遥感影像内陆网箱养殖区提取
引用本文:基于全卷积网络模型的高分遥感影像内陆网箱养殖区提取.基于全卷积网络模型的高分遥感影像内陆网箱养殖区提取[J].山东科学,2022,35(2):1-10.
作者姓名:基于全卷积网络模型的高分遥感影像内陆网箱养殖区提取
作者单位:1.中国石油大学(华东) 海洋与空间信息学院,山东 青岛 2665802.微山县自然资源和规划局,山东 济宁 2776003.中国科学院 a.空天信息创新研究院;b.数字地球重点实验室,北京 100094
基金项目:中国科学院战略性先导科技专项(A类)(XDA19060103)
摘    要:为了研究高分遥感影像的内陆网箱养殖区自动快速提取,利用福建省北部内陆水域的GF-1影像和GF-2影像,并对影像中的网箱养殖区进行人工标注,经过旋转、缩放和镜像翻转等数据增强处理后构建了2种影像的内陆网箱养殖区样本库;利用样本库训练内陆网箱养殖区提取的深度学习全卷积网络(fully convolutional networks,FCN)模型并开展精度验证。结果显示,GF-1影像提取结果的F值达到83.37%,GF-2影像提取结果的F值达到92.56%。表明基于FCN的高分影像内陆网箱养殖区提取具有较高的精度,能够进行大规模内陆网箱养殖区提取应用,为内陆水产养殖区的监测提供重要依据。

关 键 词:深度学习  全卷积网络模型  数据增强  高分辨率遥感影像  GF卫星  内陆网箱养殖区  养殖区提取  
收稿时间:2021-07-15

Extracting inland cage aquacultural areas from high-resolution remote sensing images using fully convolutional networks model
LI Lian-wei,ZHANG Yuan-yu,YUE Zeng-you,XUE Cun-jin,FU Yu-xuan,XU Yang-feng.Extracting inland cage aquacultural areas from high-resolution remote sensing images using fully convolutional networks model[J].Shandong Science,2022,35(2):1-10.
Authors:LI Lian-wei  ZHANG Yuan-yu  YUE Zeng-you  XUE Cun-jin  FU Yu-xuan  XU Yang-feng
Institution:1. College of Oceanography and Space Informatics, China University of Petroleum, Qingdao 266580, China2. Natural resources and Planning Bureau of Weishan County, Jining 277600, China3. a.Aerospace Information Research Institute; b.Key Laboratory of Digital Earth Science, Chinese Academy of Sciences, Beijing 100094, China
Abstract:The extraction of cage aquacultural areas was investigated using high-resolution GF-1 and GF-2 remote sensing images from northern Fujian Province. Image enhancement was performed by correction, fusion, and cropping. The sample database of inland cage culture areas of two kinds of images was constructed; The sample bank is used to train the in-depth learning fully convolutional networks (FCN) model extracted from inland cage culture area and verify the accuracy. The results of the test experiment show that the F-measure of GF-1 and GF-2 reaches 83.37% and 92.56%,respectively. It shows that the inland cage culture area extraction based on FCN has high accuracy, and can be used for large-scale inland cage acquaculture area extraction, which provides an important basis for the monitoring of inland aquaculture area.
Keywords:deep learning  FCN model  data enhancement  high-resolution remote sensing image  GF satellite  inland cage aquacultural area  aquacultural area extraction  
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