基于单个前端扫描点云的参数化人体重构

Xihang Li, Guiqin Li, Ming Li, Haoju Song
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引用次数: 0

摘要

全身三维扫描简化了数字人体模型的获取。然而,目前的系统体积庞大、结构复杂、成本高昂,并受到严格的服装限制。我们提出了一种将身体内部形状推理和参数模型注册相结合的管道,用于从穿衣人体的单次正面扫描中重建相应的人体模型。我们提出了三个功能相对独立的网络模块(Scan2Front-Net、Front2Back-Net 和 Inner2Corr-Net),分别用于预测前内部、后内部和参数模型参考点云。我们将后内侧点云视为前内侧点云的轴向偏移,并将人体分为 14 个部分。然后在同一身体部位内学习这种偏移关系,以减少推理的模糊性。将预测的前后内部点云合并为身体内部点云,然后通过参考点云和身体内部点云之间的点对点对应关系注册参数化身体模型,从而实现重建。定性和定量分析表明,所提出的方法在完成人体形状和重建人体模型精度方面具有显著优势。
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Parametric Body Reconstruction Based on a Single Front Scan Point Cloud.

Full-body 3D scanning simplifies the acquisition of digital body models. However, current systems are bulky, intricate, and costly, with strict clothing constraints. We propose a pipeline that combines inner body shape inference and parametric model registration for reconstructing the corresponding body model from a single front scan of a clothed body. Three networks modules (Scan2Front-Net, Front2Back-Net, and Inner2Corr-Net) with relatively independent functions are proposed for predicting front inner, back inner, and parametric model reference point clouds, respectively. We consider the back inner point cloud as an axial offset of the front inner point cloud and divide the body into 14 parts. This offset relationship is then learned within the same body parts to reduce the ambiguity of the inference. The predicted front and back inner point clouds are concatenated as inner body point cloud, and then reconstruction is achieved by registering the parametric body model through a point-to-point correspondence between the reference point cloud and the inner body point cloud. Qualitative and quantitative analysis show that the proposed method has significant advantages in terms of body shape completion and reconstruction body model accuracy.

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