Submission: Coupled Iterative Refinement/ITODD

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Submission name
Submission time (UTC) April 25, 2022, 6:52 p.m.
User lahav
Task Model-based 6D localization of seen objects
Dataset ITODD
Training model type Default
Training image type Synthetic (only PBR images provided for BOP Challenge 2020 were used)
Description Single view. Dataset splits: train_pbr
Evaluation scores
AR:0.381
AR_MSPD:0.370
AR_MSSD:0.379
AR_VSD:0.394
average_time_per_image:-1.000

Method: Coupled Iterative Refinement

User lahav
Publication Coupled Iterative Refinement for 6D Multi-Object Pose Estimation, CVPR 2022
Implementation https://github.com/princeton-vl/coupled-iterative-refinement
Training image modalities RGB-D
Test image modalities RGB-D
Description

We propose a new approach to 6D object pose estimation which consists of an end-to-end differentiable architecture that makes use of geometric knowledge. Our approach it- eratively refines both pose and correspondence in a tightly coupled manner, allowing us to dynamically remove outliers to improve accuracy. We use a novel differentiable layer to perform pose refinement by solving an optimization problem we refer to as Bidirectional Depth-Augmented Perspective- N-Point (BD-PnP).

Computer specifications 2 RTX-3090s