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RelPose++: Recovering 6D Poses from Sparse-view Observations

About

We address the task of estimating 6D camera poses from sparse-view image sets (2-8 images). This task is a vital pre-processing stage for nearly all contemporary (neural) reconstruction algorithms but remains challenging given sparse views, especially for objects with visual symmetries and texture-less surfaces. We build on the recent RelPose framework which learns a network that infers distributions over relative rotations over image pairs. We extend this approach in two key ways; first, we use attentional transformer layers to process multiple images jointly, since additional views of an object may resolve ambiguous symmetries in any given image pair (such as the handle of a mug that becomes visible in a third view). Second, we augment this network to also report camera translations by defining an appropriate coordinate system that decouples the ambiguity in rotation estimation from translation prediction. Our final system results in large improvements in 6D pose prediction over prior art on both seen and unseen object categories and also enables pose estimation and 3D reconstruction for in-the-wild objects.

Amy Lin, Jason Y. Zhang, Deva Ramanan, Shubham Tulsiani• 2023

Related benchmarks

TaskDatasetResultRank
Multi-view pose regressionCO3D v2
RRA@1585.5
31
6D Object Pose EstimationToyota-Light (TOYL) (test)
AR30.5
18
Multi-view pose regressionRealEstate10K--
15
Camera pose estimationCO3D 10-view v2
RRA@1582.3
12
Relative Camera Pose EstimationCO3D v2 (test)
RRA@1582.3
12
Visual LocalizationChang'e-3 Real Flight Dataset (test)
Translational Error29.9
11
Visual LocalizationSynthetic Dataset (T1)
Translational Error (m)30.6
11
Visual LocalizationSynthetic Dataset (T2)
Translation Error (m)35.83
11
Visual LocalizationSynthetic Dataset (T3)
Translational Error (m)40.05
11
Visual LocalizationSynthetic Dataset (T4)
Translational Error (m)45.27
11
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