We have many satellite images of a forest with different heights of vegetation. From them we have extracted 20 big square areas called AOIs (areas of interest) in tiff format (after we have cleaned them from inappropriate data), 8 gb each, with labels and everything.
We need to classify those squares in 5 classes, according to their height, with 3 methods:
A) With pre-trained networks:
1 - LZW compression
B) Without pre-trained networks:
Instead of writing a network from scratch
and scrutinizing the ideal depth of the network, number of parameters within each layer
and other hyperparametrs, you can simply find the code of a pre-trained network on keras
and copy paste it with some modifications.
We have implemented 1 method only for 8 of the 20 AOIs. We want them all!! You will either need a great CPU, a great GPU, or a smart method like we did, to train it.
We will also need full documentation of the implementation, accompanied with screenshots.
I will send the full description in chat and I will be happy to answer any questions. The budget is $216 and we have ~ 5-6 days .
7 pekerja bebas membida secara purata $180 untuk pekerjaan ini
My preferred method of freelancing is an interactive approach to project solving. I have an MSEE specializing in Digital Signal/Image/RF Processing. I do my work in MATLAB (expert). I also do Python programming.
As a guru in Python and Neural-nets, I wish to express my interest for this project. Please not I have 10+ years of experience. I'd be willing to discuss the details in chat. Cheers