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Published December 20, 2022 | Accepted Version
Report Open

Mesh R-CNN

Abstract

Rapid advances in 2D perception have led to systems that accurately detect objects in real-world images. However, these systems make predictions in 2D, ignoring the 3D structure of the world. Concurrently, advances in 3D shape prediction have mostly focused on synthetic benchmarks and isolated objects. We unify advances in these two areas. We propose a system that detects objects in real-world images and produces a triangle mesh giving the full 3D shape of each detected object. Our system, called Mesh R-CNN, augments Mask R-CNN with a mesh prediction branch that outputs meshes with varying topological structure by first predicting coarse voxel representations which are converted to meshes and refined with a graph convolution network operating over the mesh's vertices and edges. We validate our mesh prediction branch on ShapeNet, where we outperform prior work on single-image shape prediction. We then deploy our full Mesh R-CNN system on Pix3D, where we jointly detect objects and predict their 3D shapes.

Additional Information

We would like to thank Kaiming He, Piotr Dollár, Leonidas Guibas, Manolis Savva and Shubham Tulsiani for valuable discussions. We would also like to thank Lars Mescheder and Thibault Groueix for their help.

Attached Files

Accepted Version - 1906.02739.pdf

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Additional details

Created:
August 19, 2023
Modified:
October 24, 2023