Submission: gfreedet2-6d-default2d/HOPEv2

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Submission name
Submission time (UTC) Sept. 9, 2025, 3:42 a.m.
User gfreedet
Task Model-free 6D detection of unseen objects
Dataset HOPEv2
Description
Evaluation scores
AP:0.411
AP_25:0.339
AP_25_mm:0.128
AP_MSPD:0.482
AP_MSSD:0.339
AP_MSSD_mm:0.128
average_time_per_image:36.761

Method: gfreedet2-6d-default2d

User gfreedet
Publication Not yet
Implementation
Training image modalities None
Test image modalities RGB
Description

Training data: None

Onboarding data:

Model-free: using static onboarding sequences to reconstruct 3DGS models, rendering templates for 2D detection (162 rendered images + 64 sampled static onboarding images) and coarse pose estimation (~800 rendered images). The average onboarding time for reconstructing a GS object and generating its templates/descriptors for 6D coarse detection is about 270s (We use the provided default 2D detection).

Notes:

For unified 3DGS reconstruction from pinhole and fisheye images, we use an adaptive perspective cropping strategy to preprocess static onboarding images. Then the object Gaussians are rapidly trained with these cropped pinhole images for 10k iterations. With the obtained GS models, we prepare templates as described above.

For 2D detection, we use the provided default model-free CNOS (FastSAM) - Static onboarding.

For coarse 6D pose detection, we extend FoundPose to support the model-free setting by using the templates rendered from 3DGS. We further extend FoundPose to support correct and unified perspective cropping for pinhole/fisheye query images.

For fine 6D pose detection, we extend GoTrack (which estimates pose via render-to-observation flow and PnP/RANSAC) to support the model-free setting by leveraging the gsplat renderer.

Authors: Temporary Anonymity

Computer specifications NVIDIA L20