Li Congyi, Kong Xiangbing, Yang Na, et al. A U-Net Based Land Use/Cover Change Detection Method with High Resolution Image[J]. Bulletin of Soiland Water Conservation, 2021, 41(4): 133-138.
DOI:
Li Congyi, Kong Xiangbing, Yang Na, et al. A U-Net Based Land Use/Cover Change Detection Method with High Resolution Image[J]. Bulletin of Soiland Water Conservation, 2021, 41(4): 133-138. DOI: 10.13961/j.cnki.stbctb.2021.04.019.
A U-Net Based Land Use/Cover Change Detection Method with High Resolution Image
[Objective] The U-Net based land use/cover change detection method with high resolution image was introduced to provide theoretical support for the application of the model in remote sensing image change detection. [Methods] The U-type neural network was used to detect the change spots in Gaofen-1 image of Yuzhou City
He’nan Province and WHU building data
and compared with FCN and SegNet. [Results] The experimental results showed that the F1 score of U-type neural network model were 0.699
0.66 and 0.673 respectively
which were better than the other two methods
and the missing rate was lower
which was closer to the change reference diagram. [Conclusion] It is feasible to use U-type neural network for change detection in high-resolution remote sensing images
Bruzzone L, Bovolo F. A novel framework for the design of change-detection systems for very-high-resolution remote sensing images[J]. Proceedings of the IEEE, 2013, 101(3):609-630.
Sohl T L. Change analysis in the United Arab Emirates:An investigation of techniques[J]. Photogrammetric Engineering & Remote Sensing, 1999, 65(4):475-484.
Desclée B, Bogaert P, Defourny P. Forest change detection by statistical object-based method[J]. Remote Sensing of Environment, 2006, 102(12):1-11.
Jin Suming, Yang Liming, Zhu Zhe, et al. A land cover change detection and classification protocol for updating Alaska NLCD 2001 to 2011[J]. Remote Sensing of Environment, 2017, 195:44-55.
Xian G, Homer C. Updating the 2001 National Land Cover Database impervious surface products to 2006 using Landsat imagery change detection methods[J]. Remote Sensing of Environment, 2010, 114(8):1676-1686.
Sonnenschein R, Kuemmerle T, Udelhoven T, et al. Differences in Landsat-based trend analyses in drylands due to the choice of vegetation estimate[J]. Remote Sensing of Environment, 2011, 115(6):1408-1420.
Elmore A J, Mustard J F, Manning S J, et al. Quantifying vegetation change in semiarid environments:Precision and accuracy of spectral mixture analysis and the normalized difference vegetation index[J]. Remote Sensing of Environment, 2000, 73(1):87-102.
Song Chunqiao, Huang Bo, Ke Linghong, et al. Remote sensing of alpine lake water environment changes on the Tibetan Plateau and surroundings:A review[J]. ISPRS Journal of Photogrammetry and Remote Sensing, 2014, 92:26-37.
Brunner D, Lemoine G, Bruzzone L. Earthquake damage assessment of buildings using VHR optical and SAR imagery[J]. IEEE Transaction on Geoscience & Remote Sensing, 2010, 48(5):2403-2420.
Daudt R C, Le Saux B, Boulch A. Fully Convolutional Siamese Networks for Change Detection[C]//2018 25th IEEE Internation Conference on Image Processing(ICIP), 2018.
Long J, Shelhamer E, Darrell T. Fully Convolutional Networks for Semantic Segmentation[C]//Proceedings of the Ieee Conference on Computer Vision and Pattern Recognition, 2015.
Ronneberger O, Fischer P, Brox T. U-Net:Convolutional Networks for Biomedical Image Segmentation[C]//International Conference on Medical Image Computing and Computer-Assisted Intervention, 2015.
Maxwell A E, Warner T A, Fang F. Implementation of machine-learning classification in remote sensing:An applied review[J]. International Journal of Remote Sensing, 2018,39(9):2784-2817.
Badrinarayanan V, Kendall A, Cipolla R. Segnet:A deep convolutional encoder-decoder architecture for image segmentation[J]. IEEE Transactions on Pattern Analysis and Machine Intelligence, 2017,39(12):2481-2495.
Lei Tao, Zhang Yuxiao, Lv Zhiyoug, et al. Landslide inventory mapping from Bitemporal images using deep convolutional neural networks[J]. IEEE Geoscience and Remote Sensing Letters, 2019,16(6):982-986.