Submission: Co-op (CNOS, Coarse, RGBD)/IC-BIN/BOP 2024

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Submission name BOP 2024
Submission time (UTC) Nov. 28, 2024, 8:13 a.m.
User sp9103
Task Model-based 6D detection of unseen objects
Dataset IC-BIN
Description
Evaluation scores
AP:0.469
AP_25:-1.000
AP_25_mm:-1.000
AP_MSPD:0.459
AP_MSSD:0.479
AP_MSSD_mm:-1.000
average_time_per_image:2.167

Method: Co-op (CNOS, Coarse, RGBD)

User sp9103
Publication Not yet
Implementation -
Training image modalities RGB-D
Test image modalities RGB-D
Description

Submitted to: BOP Challenge 2024

Training data: MegaPose-GSO and MegaPose-ShapeNetCore

Onboarding data: 42 rendered templates

Used 3D models: Default, CAD

Notes:

Our coarse estimator is based on local feature matching between the query image and multiple pre-rendered templates. We model the query and rendered images as aggregation of multiple patches. The coarse network finds the matchings between patch centers of input crop and rendered templates. From the 42 templates, the best template is selected and pose hypothesis is generated by RANSAC-PnP for RGB and MAGSAC++ [A] for RGB-D case.

We use CroCo [B] pretraining for our coarse estimator. Note that the inputs to our neural networks are the rgb images only. The 2D detector used is specified in parentheses in the title, and it uses the FastSAM object proposals.

[A] Barath et al.: MAGSAC++, a fast, reliable and accurate robust estimator, CVPR 2020
[B] Weinzaepfel et al.: CroCo v2: Improved Cross-view Completion Pre-training for Stereo Matching and Optical Flow, ICCV 2023

List of contributors: Sungphill Moon (sungphill.moon@naverlabs.com), Hyeontae Son (son.ht@naverlabs.com)

If you have any questions, feel free to contact us.

Computer specifications