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Pixel2Mesh: Generating 3D Mesh Models from Single RGB Images

About

We propose an end-to-end deep learning architecture that produces a 3D shape in triangular mesh from a single color image. Limited by the nature of deep neural network, previous methods usually represent a 3D shape in volume or point cloud, and it is non-trivial to convert them to the more ready-to-use mesh model. Unlike the existing methods, our network represents 3D mesh in a graph-based convolutional neural network and produces correct geometry by progressively deforming an ellipsoid, leveraging perceptual features extracted from the input image. We adopt a coarse-to-fine strategy to make the whole deformation procedure stable, and define various of mesh related losses to capture properties of different levels to guarantee visually appealing and physically accurate 3D geometry. Extensive experiments show that our method not only qualitatively produces mesh model with better details, but also achieves higher 3D shape estimation accuracy compared to the state-of-the-art.

Nanyang Wang, Yinda Zhang, Zhuwen Li, Yanwei Fu, Wei Liu, Yu-Gang Jiang• 2018

Related benchmarks

TaskDatasetResultRank
3D Mesh Similarity Metric CorrelationShape Grading
PLCC0.58
117
3D Object ReconstructionShapeNet (test)
Mean IoU0.7419
80
3D ReconstructionShapeNet (test)
EMD0.579
74
Single-view ReconstructionShapeNet
pla53.6
20
3D Object ReconstructionShapeNet 32^3 resolution (test)
Parameters (M)21.36
20
2D-to-3D ReconstructionShapeNet 1 (test)--
18
Single-view 3D mesh reconstructionShapeNet v1 (test)
CD (Chair)4.787
12
Single-image 3D ReconstructionShapeNetCore Cars v1 (test)
Chamfer Distance (x1000)0.268
11
Single-image 3D ReconstructionShapeNetCore v1 Chairs (test)
Chamfer Distance (x1000)0.61
11
Single-image 3D ReconstructionShapeNetCore Planes v1 (test)
CD (x1000)0.477
11
Showing 10 of 20 rows

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