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Disentangled Human Body Embedding Based on Deep Hierarchical Neural Network

机译:基于深层分层神经网络的解开人体嵌入

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Human bodies exhibit various shapes for different identities or poses, but the body shape has certain similarities in structure and thus can be embedded in a low-dimensional space. This article presents an autoencoder-like network architecture to learn disentangled shape and pose embedding specifically for the 3D human body. This is inspired by recent progress of deformation-based latent representation learning. To improve the reconstruction accuracy, we propose a hierarchical reconstruction pipeline for the disentangling process and construct a large dataset of human body models with consistent connectivity for the learning of the neural network. Our learned embedding can not only achieve superior reconstruction accuracy but also provide great flexibility in 3D human body generation via interpolation, bilinear interpolation, and latent space sampling. The results from extensive experiments demonstrate the powerfulness of our learned 3D human body embedding in various applications.
机译:人体为不同的身份或姿势表现出各种形状,但体形具有结构的某些相似之处,因此可以嵌入低维空间。本文介绍了一种自动频体样网络架构,用于学习专门为3D人体专门嵌入的脱屑形状和姿势。这是基于变形的潜在代表学习的最新进展的启发。为了提高重建准确性,我们提出了一种用于解开过程的分层重建管道,并构建人体模型的大型数据集,用于学习神经网络的一致连通性。我们学到的嵌入不仅可以实现卓越的重建准确性,而且通过插值,双线性插值和潜空间采样,在3D人体生成中提供了极大的灵活性。来自广泛实验的结果展示了我们学习的3D人体在各种应用中嵌入的强大。

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