dc.description.abstracten |
After a significant improvement in the computational powers of modern comput-
ers, the models became larger, and their accuracy increased. However, due to a high
amount of parameters, modern neural networks also need much bigger datasets
for efficient usage. Augmentation partly solves this problem, but the most up-to-
date augmentation still doesn’t change the image patterns. We propose a new way
of augmentation by using inpainting models to change the image’s nature. Then
we compare model performance by using traditional augmentation and GANAug-
mentation. The second part of this study will use Test Time Augmentation(TTA) to
improve model performance for data which come from another source. |
uk |