Style Agnostic 3D Reconstruction via Adversarial Style Transfer

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PETERSEN, Felix, Bastian GOLDLUECKE, Oliver DEUSSEN, Hilde KUEHNE, 2022. Style Agnostic 3D Reconstruction via Adversarial Style Transfer. 2022 IEEE Winter Conference on Applications of Computer Vision. Waikoloa, Hawaii, Jan 4, 2022 - Jan 8, 2022. In: 2022 IEEE Winter Conference on Applications of Computer Vision : WACW 2022 : proceedings : 4 - 8 January 2022, Waikoloa, Hawaii. Piscataway:IEEE, pp. 2273-2282. ISBN 978-1-66540-915-5. Available under: doi: 10.1109/WACV51458.2022.00233

@inproceedings{Petersen2022Style-58150, title={Style Agnostic 3D Reconstruction via Adversarial Style Transfer}, year={2022}, doi={10.1109/WACV51458.2022.00233}, isbn={978-1-66540-915-5}, address={Piscataway}, publisher={IEEE}, booktitle={2022 IEEE Winter Conference on Applications of Computer Vision : WACW 2022 : proceedings : 4 - 8 January 2022, Waikoloa, Hawaii}, pages={2273--2282}, author={Petersen, Felix and Goldluecke, Bastian and Deussen, Oliver and Kuehne, Hilde} }

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