SM-NET:从单个真实世界图像重建三维结构化网格模型

Yue Yu, Ying Li, Jingyi Zhang, Yue Yang
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摘要

基于图像的三维结构化模型重构使网络能够学习到维度之间缺失的信息,从而理解三维模型的结构。本文提出了基于真实世界单幅图像重建三维结构化网格模型的SM-NET方法。首先,将模型视为零件序列,设计形状自编码器对三维模型进行自编码;其次,该网络从真实图像中提取2.5D信息,并将其映射到形状自编码器的隐空间中。最后,将两者连接起来以完成重建任务。此外,构建了更为合理的三维结构化模型数据集,增强了重建效果。实验结果表明,我们实现了基于单幅真实世界图像的三维结构化网格模型重建,优于其他方法。
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SM-NET: Reconstructing 3D Structured Mesh Models from Single Real-World Image
Image-based 3D structured model reconstruction enables the network to learn the missing information between the dimensions and understand the structure of the 3D model. In this paper, SM-NET is proposed in order to reconstruct 3D structured mesh model based on single real-world image. First, it considers the model as a sequence of parts and designs a shape autoencoder to autoencode 3D model. Second, the network extracts 2.5D information from the real-world image and maps it to the latent space of the shape autoencoder. Finally, both are connected to complete the reconstruction task. Besides, a more reasonable 3D structured model dataset is built to enhance the effect of reconstruction. The experimental results show that we achieve the reconstruction of 3D structured mesh model based on single real-world image, outperforming other approaches.
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