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There are 31 images (complete) in folders such as nebraska_20170108t002112.
Images are further divided into images of size 256*256.
The folders have 4 types of images vv, vh, flood_label and water_body_label.
The complete image has padding that is empty this empty space can cause problems while training and must be dealt with.
Built two functions which combine vh and vv image to give a single image.
Built a function(out) to combine flood_label and water_body_label to only give a image which shows only a flood reigion.
Built a dropper function which drops the image which has significant padding.
Found a simple model on stackoverflow for image to image.
Model first scales down the iamge and then scales up the image.
Could not train on complete traning set due to memory restriction.
Used only one of the two function to combine vh and vv image, used dropper and out function.
Due to laptop limitations, batch_size was set to 1.
Trained model is stored in h5, json file.
The model is not trained on overall dataset so one can pick up from there and work on it.
There are opportunities for further improvement in building a better model.
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