All Projects → hlamba28 → Unet Tgs

hlamba28 / Unet Tgs

Licence: mit
Applying UNET Model on TGS Salt Identification Challenge hosted on Kaggle

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UNET-TGS

Please read my blog https://medium.com/@harshall.lamba/understanding-semantic-segmentation-with-unet-6be4f42d4b47 for detailed understanding of the project.

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