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5 months ago

BCNet: Learning Body and Cloth Shape from A Single Image

Jiang Boyi ; Zhang Juyong ; Hong Yang ; Luo Jinhao ; Liu Ligang ; Bao Hujun

BCNet: Learning Body and Cloth Shape from A Single Image

Abstract

In this paper, we consider the problem to automatically reconstruct garmentand body shapes from a single near-front view RGB image. To this end, wepropose a layered garment representation on top of SMPL and novelly make theskinning weight of garment independent of the body mesh, which significantlyimproves the expression ability of our garment model. Compared with existingmethods, our method can support more garment categories and recover moreaccurate geometry. To train our model, we construct two large scale datasetswith ground truth body and garment geometries as well as paired color images.Compared with single mesh or non-parametric representation, our method canachieve more flexible control with separate meshes, makes applications likere-pose, garment transfer, and garment texture mapping possible. Code and somedata is available at https://github.com/jby1993/BCNet.

Code Repositories

jby1993/BCNet
Official
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
garment-reconstruction-on-4d-dressBCNet_Upper
Chamfer (cm): 2.079
IOU: 0.700
garment-reconstruction-on-4d-dressBCNet_Lower
Chamfer (cm): 2.533
IOU: 0.675
garment-reconstruction-on-4d-dressBCNet_Outer
Chamfer (cm): 3.600
IOU: 0.639

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BCNet: Learning Body and Cloth Shape from A Single Image | Papers | HyperAI