Domain Adaptation on Semantic Segmentation with Separate Affine Transformation in Batch Normalization

En cours de chargement...
Vignette d'image

Nom de la revue

ISSN de la revue

Titre du volume

Éditeur

Université d'Ottawa / University of Ottawa

Licence Creative Commons

Attribution-NonCommercial 4.0 International

Résumé

Domain adaptation on semantic segmentation generally refers to the procedures for narrowing the distribution gap between source and target data, which is vital for developing the automatic vehicle system. It requires a large amount of data with well-labelled ground truth at the pixel level. Labelling this scale of data is extremely costly due to the lot of human effort required. Also, manually labelling often comes with label noises that are harmful to automatic vehicle system development. In this case, solving the above problem utilizes computer-generated data and ground truth for development. However, a notorious problem exists when a system is trained with synthetic data but deployed in a real-world environment, which results from the distribution (domain) difference between these two kinds of data, and domain adaptation helps solve this issue. In the thesis, the limitation of conventional batch normalization layer on adversarial learning based domain adaptation methods is mentioned and discussed. From the view of the limitation, we propose replacing the Sharing Affine Transformation with our proposed Separate Affine Transformation (SEAT) to improve the domain adapting performance. The proposed SEAT is simple, easily implemented, and integrated into existing adversarial learning-based unsupervised domain adaptation methods. Also, to further improve the adaptation quality on lower-level features, we introduce multi-level adaptation by adding the lower-level features to the higher-level ones before feeding them to the discriminator, which is different from others by adding extra discriminators. Finally, a simple training strategy, self-training, is adopted to improve the model performance further. Extensive experiments show that our proposed method is able to get comparable results with other domain adaptation methods with simpler design.

Description

Mots-clés

Domain Adaptation, Deep Learning

Citation

Approbation

Évaluation

Complété par

Référencé par