no code implementations • 29 Sep 2020 • Akin Caliskan, Armin Mustafa, Evren Imre, Adrian Hilton
This paper introduces two advances to overcome this limitation: firstly a new synthetic dataset of realistic clothed people, 3DVH; and secondly, a novel multiple-view loss function for training of monocular volumetric shape estimation, which is demonstrated to significantly improve generalisation and reconstruction accuracy.
no code implementations • 2 Oct 2019 • Akin Caliskan, Armin Mustafa, Evren Imre, Adrian Hilton
We show that it is possible to learn stereo matching from synthetic people dataset and improve performance on real datasets for stereo reconstruction of people from narrow and wide baseline stereo data.