The 3D cloth segmentation task is particularly challenging due to the extreme variation of shapes, even among the same category of clothes. Several data-driven methods try to cope with this problem but they have to face the lack of available data capable to generalize to the variety of real-world data. For this reason, we present GIM3D (Garments In Motion 3D), a synthetic dataset of clothed 3D human characters in different poses. The over 4000 3D models in this dataset are produced by a physical simulation of clothes with different fabrics, sizes, and tightness, using animated human avatars having a large variety of shapes. Our dataset is composed of single meshes created to simulate 3D scans, with labels for the separate clothes and the visible body parts. We also provide an evaluation of the use of GIM3D as a training set on garment segmentation tasks using state-of-the-art data-driven methods for both meshes and point clouds.

Musoni, P., Melzi, S., Castellani, U. (2022). GIM3D: A 3D dataset for garment segmentation. In Eurographics Italian Chapter Proceedings - Smart Tools and Applications in Graphics, STAG (pp.21-28). Eurographics Association [10.2312/stag.20221252].

GIM3D: A 3D dataset for garment segmentation

Melzi S.;
2022

Abstract

The 3D cloth segmentation task is particularly challenging due to the extreme variation of shapes, even among the same category of clothes. Several data-driven methods try to cope with this problem but they have to face the lack of available data capable to generalize to the variety of real-world data. For this reason, we present GIM3D (Garments In Motion 3D), a synthetic dataset of clothed 3D human characters in different poses. The over 4000 3D models in this dataset are produced by a physical simulation of clothes with different fabrics, sizes, and tightness, using animated human avatars having a large variety of shapes. Our dataset is composed of single meshes created to simulate 3D scans, with labels for the separate clothes and the visible body parts. We also provide an evaluation of the use of GIM3D as a training set on garment segmentation tasks using state-of-the-art data-driven methods for both meshes and point clouds.
paper
Shape segmentation; Shape analysis; 3D Clothed humans; Garment segmentation
English
9th Smart Tools and Applications in Graphics Conference, STAG 2022 - 17 November 2022 through 18 November 2022
2022
Cabiddu, D; Schneider, T; Cherchi, G; Scateni, R; Fellner, D
Eurographics Italian Chapter Proceedings - Smart Tools and Applications in Graphics, STAG
9783038681915
2022
21
28
open
Musoni, P., Melzi, S., Castellani, U. (2022). GIM3D: A 3D dataset for garment segmentation. In Eurographics Italian Chapter Proceedings - Smart Tools and Applications in Graphics, STAG (pp.21-28). Eurographics Association [10.2312/stag.20221252].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/558644
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