Abstract
Previous garment modeling techniques mainly focus on designing novel garments to dress up virtual characters. We study the modeling of real garments and develop a system that is intuitive to use even for novice users. Our system includes garment component detectors and design attribute classifiers learned from a manually labeled garment image database. In the modeling time, we scan the garment with a Kinect and build a rough shape by KinectFusion from the raw RGBD sequence. The detectors and classifiers will identify garment components (e.g. collar, sleeve, pockets, belt, and buttons) and their design attributes (e.g. falbala collar or lapel collar, hubble-bubble sleeve or straight sleeve) from the RGB images. Our system also contains a 3D deformable template database for garment components. Once the components and their designs are determined, we choose appropriate templates, stitch them together, and fit them to the initial garment mesh generated by KinectFusion. Experiments on various different garment styles consistently generate high quality results.
| Original language | English |
|---|---|
| Article number | 203 |
| Journal | ACM Transactions on Graphics |
| Volume | 34 |
| Issue number | 6 |
| DOIs | |
| State | Published - Nov 2015 |
Keywords
- 3D templates
- Depth camera
- Garment modeling
- Garment parsing
- Semantic modeling
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