Training PointNet for human point cloud segmentation with 3D meshes

Takuma Ueshima, Katsuya Hotta, Shogo Tokai, Chao Zhang
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引用次数: 2

Abstract

PointNet, which enables end-to-end learning for scattered/unordered point data, is a popular neural network architecture. However, in many applications, large amounts of complete point clouds are hardly available for non-rigid objects such as the human body. To generate the training data of PointNet, in this study, we propose to generate human body point clouds of various postures by uniformly sampling point clouds from meshes with respect to multiple human mesh model datasets. Experiments show that the model trained with the point clouds generated from mesh data is effective in the task of human body segmentation.
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训练PointNet的人类点云分割与3D网格
PointNet是一种流行的神经网络架构,它支持对分散/无序的点数据进行端到端学习。然而,在许多应用中,大量完整的点云很难用于非刚性物体,如人体。为了生成PointNet的训练数据,在本研究中,我们提出通过对多个人体网格模型数据集从网格中均匀采样点云来生成各种姿势的人体点云。实验表明,用网格数据生成的点云训练的模型在人体分割任务中是有效的。
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