SAR_Change_Detection_CWNN
Sea ice detector
An implementation of a sea ice change detection system using a neural network architecture.
Matlab code for "Sea ice change detection in SAR images based on convolutional-wavelet neural networks," IEEE GRSL 2019
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Language: MATLAB
last commit: about 3 years ago
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