Unsupervised stepwise extraction of offshore aquaculture ponds using super-resolution hyperspectral images

Siqi Du1, Hongsheng Huang1, Fan He2, Heng Luo2,3, Yumeng Yin1, Xiaoming Li1, Linfu Xie1, Renzhong Guo1, Shengjun Tang1
1School of Architecture and Urban Planning, Research Institute for Smart Cities, Shenzhen University & Key Laboratory of Urban Land Resources Monitoring and Simulation, Ministry of Natural Resources, Shenzhen, PR China
2Guangxi Zhuang Autonomous Region Institute of Natural Resources Remote Sensing, Guangxi, PR China
3Key Laboratory of China ASEAN Satellite Remote Sensing Application, Ministry of Natural Resources, Guangxi, PR China

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