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22
12

Ray-ONet: Efficient 3D Reconstruction From A Single RGB Image

5 July 2021
Wenjing Bian
Zirui Wang
Kejie Li
V. Prisacariu
    3DV
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Abstract

We propose Ray-ONet to reconstruct detailed 3D models from monocular images efficiently. By predicting a series of occupancy probabilities along a ray that is back-projected from a pixel in the camera coordinate, our method Ray-ONet improves the reconstruction accuracy in comparison with Occupancy Networks (ONet), while reducing the network inference complexity to O(N2N^2N2). As a result, Ray-ONet achieves state-of-the-art performance on the ShapeNet benchmark with more than 20×\times× speed-up at 1283128^31283 resolution and maintains a similar memory footprint during inference.

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