GarMatNet: A Learning-based Method for Predicting 3D Garment Mesh with Parameterized Materials

Z. Luo, Tianxing Li, T. Kanai
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Abstract

Recent progress in learning-based methods of garment mesh generation is resulting in increased efficiency and maintenance of reality during the generation process. However, none of the previous works so far have focused on variations in material types based on a parameterized material parameter under static poses. In this work, we propose a learning-based method, GarMatNet, for predicting garment deformation based on the functions of human poses and garment materials while maintaining detailed garment wrinkles. GarMatNet consists of two components: a generally-fitting network for predicting smoothed garment mesh and a locally-detailed network for adding detailed wrinkles based on smoothed garment mesh. We hypothesize that material properties play an essential role in the deformation of garments. Since the influences of material type are relatively smaller than pose or body shape, we employ linear interpolation among different factors to control deformation. More specifically, we apply a parameterized material space based on the mass-spring model to express the difference between materials and construct a suitable network structure with weight adjustment between material properties and poses. The experimental results demonstrate that GarMatNet is comparable to the physically-based simulation (PBS) prediction and offers advantages regarding generalization ability, model size, and training time over the baseline model.
GarMatNet:一种基于学习的参数化材料三维服装网格预测方法
基于学习的服装网格生成方法的最新进展是在生成过程中提高效率和保持真实性。然而,到目前为止,之前的工作都没有关注静态姿态下基于参数化材料参数的材料类型变化。在这项工作中,我们提出了一种基于学习的方法GarMatNet,该方法基于人体姿势和服装材料的功能来预测服装变形,同时保持服装褶皱的细节。GarMatNet由两部分组成:用于预测光滑服装网格的一般拟合网络和基于光滑服装网格添加细节皱纹的局部细节网络。我们假设材料性能在服装变形中起着至关重要的作用。由于材料类型的影响相对小于姿态或身体形状,我们采用不同因素之间的线性插值来控制变形。具体而言,我们采用基于质量-弹簧模型的参数化材料空间来表达材料之间的差异,并在材料性能和姿态之间进行权重调整,构建合适的网络结构。实验结果表明,GarMatNet可与基于物理的模拟(PBS)预测相媲美,并且在泛化能力、模型大小和训练时间方面优于基线模型。
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