Image regression framework 구축하기 (009 ~ 010)
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![초보 딥러닝 강의-010 학습하면 뭐라도 된다](https://camo.githubusercontent.com/d7ffc152f549343f2add5bb8189c3e86a61ff8e2e9726215a667750e32b8e115/68747470733a2f2f692e7974696d672e636f6d2f76692f584e4535557035704367452f736464656661756c742e6a7067)
Denoising
python train.py \
--mode train \
--network unet \
--learning_type residual \
--task denoising \
--opts random 30.0
Inpainting
python train.py \
--mode train \
--network unet \
--learning_type residual \
--task inpainting \
--opts uniform 0.5
python train.py \
--mode train \
--network unet \
--learning_type residual \
--task inpainting \
--opts random 0.5
Super resolution
python train.py \
--mode train \
--network unet \
--learning_type residual \
--task super_resolution \
--opts bilinear 4.0