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TScGAN-for-Improving-Semantic-Predictions

A Two-Stream Conditional Generative Adversarial Network (TScGAN) for Improving Semantic Predictions in Urban Driving Scenes Overview of the proposed post-processing framework:

The proposed scheme is a Two-Stream Conditional Generative Adversarial Network (TScGAN), with one stream having initial semantic segmentation masks predicted by an existing CNN while the other stream utilizes scene images to retain high-level information under a supervised residual network structure. In addition, TScGAN incorporates a novel dynamic weighting mechanism, which leads to significant and consistent gain in segmentation performance.

Architecture of the TScGAN Please refer to our paper for more details.

Download

Click here to download the code.

The pretrained models are found in TScGAN

Results - TScGAN

Several comparative tests on public benchmark driving databases, including Cityscapes, Mapillary, and Berkeley DeepDrive100K, demonstrate the effectiveness of the proposed method when used with state-of-the-art CNN-based semantic segmentation models. Comparison of results with state of-the-art algorithms on the Cityscapes validation dataset. Download the high-quality image results by clicking here

Citing TScGAN

If you find this framework useful in your work, please cite the paper:

Contributions

If you find any issue running the code, you can report it in the issues section.

Acknowledgements

University Technology Belfort-Montbrliard, France UTBM Connaissance et Intelligence Artificielle Distribuées CIAD

Inspiration

We hope that this will benefit the community and researchers working in the field of autonomous driving.

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A Two-Stream Conditional Generative Adversarial Network (TScGAN) for Improving Semantic Predictions in Urban Driving Scenes

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