Emily Denton, Sam Gross, Rob Fergus
We introduce a simple semi-supervised learning approach for images based on in-painting using an adversarial loss. Images with random patches removed are presented to a generator whose task is to fill in the hole, based on the surrounding pixels. The in-painted images are then presented to a discriminator network that judges if they are real (unaltered training images) or not. This task acts as a regularizer for standard supervised training of the discriminator. Using our approach we are able to directly train large VGG-style networks in a semi-supervised fashion. We evaluate on STL-10 and PASCAL datasets, where our approach obtains performance comparable or superior to existing methods.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Image Classification | STL-10 | Percentage correct | 77.8 | CC-GAN² |
| Image Classification | STL-10, 1000 Labels | Accuracy | 77.8 | CC-GAN² |
| Semi-Supervised Image Classification | STL-10, 1000 Labels | Accuracy | 77.8 | CC-GAN² |