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Semantic segmentation model #259
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Model for semantic segmentation task that uses Unet architecture and Kitti datamodule by default.
I've added simple tests for Unet, Kitti DM and SemSegment model + updated docs.
Three things I was unsure of:
To use Kitti dataset you have to manually download it and provide the local directory to the data module - how can I add checks or tests to ensure that someone has downloaded the kitti dataset?
Ideally the SemSegment model should be generalizable - this specific example uses the UNet architecture but you should be able to override this with your own architecture. Any suggestions or examples for how to add this flexibility to the model?
Where should these models be housed? I've put both UNet and SemSegment under Vision since this seemed the most general. I've implemented UNet as just an architecture to plug into other models like SemSegment. Let me know if you think they should be moved!
Also, I wasn't able to train the model on Kitti because of issues with uploading the data to a cluster. I'm thinking I'll train on PascalVOCSegmentation from torchvision instead :)