KLIEP-based Density Ratio Estimation for Semantically Consistent
Synthetic to Real Images Adaptation in Urban Traffic Scenes
- URL: http://arxiv.org/abs/2105.12549v1
- Date: Wed, 26 May 2021 13:59:19 GMT
- Title: KLIEP-based Density Ratio Estimation for Semantically Consistent
Synthetic to Real Images Adaptation in Urban Traffic Scenes
- Authors: Artem Savkin and Federico Tombari
- Abstract summary: We show how adversarial training alone can introduce semantic inconsistencies in translated images.
We propose density prematching strategy using KLIEP-based density ratio estimation procedure.
- Score: 46.526831127902604
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Synthetic data has been applied in many deep learning based computer vision
tasks. Limited performance of algorithms trained solely on synthetic data has
been approached with domain adaptation techniques such as the ones based on
generative adversarial framework. We demonstrate how adversarial training alone
can introduce semantic inconsistencies in translated images. To tackle this
issue we propose density prematching strategy using KLIEP-based density ratio
estimation procedure. Finally, we show that aforementioned strategy improves
quality of translated images of underlying method and their usability for the
semantic segmentation task in the context of autonomous driving.
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