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Input-level Inductive Biases for 3D Reconstruction

About

Much of the recent progress in 3D vision has been driven by the development of specialized architectures that incorporate geometrical inductive biases. In this paper we tackle 3D reconstruction using a domain agnostic architecture and study how instead to inject the same type of inductive biases directly as extra inputs to the model. This approach makes it possible to apply existing general models, such as Perceivers, on this rich domain, without the need for architectural changes, while simultaneously maintaining data efficiency of bespoke models. In particular we study how to encode cameras, projective ray incidence and epipolar geometry as model inputs, and demonstrate competitive multi-view depth estimation performance on multiple benchmarks.

Wang Yifan, Carl Doersch, Relja Arandjelovi\'c, Jo\~ao Carreira, Andrew Zisserman• 2021

Related benchmarks

TaskDatasetResultRank
Depth EstimationScanNet (test)
Abs Rel0.1159
65
Depth EstimationSun3D (test)
Abs Rel9.9
22
Object instance retrievalStanford Online Products (SOP) (test)
R@182.57
13
Depth EstimationSUN3D
Abs Rel0.0985
13
Depth EstimationScenes11 (test)
L1 Relative Error0.0556
12
Depth EstimationRGBD-SLAM (test)
Abs Rel0.095
10
Depth EstimationRGBD
Abs Rel0.095
10
Image RetrievalCO3D-Retrieve Full images
R@188.53
9
Image RetrievalCO3D-Retrieve With masked backgrounds
R@182.79
9
Stereo Depth EstimationScanNet
Abs. Rel. Error0.116
7
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