Submission: SMESH/TUD-L

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Submission name
Submission time (UTC) April 20, 2026, 7:54 p.m.
User andreacaraffa
Task Model-based 2D segmentation of seen objects
Dataset TUD-L
Description
Evaluation scores
AP:0.800
AP50:1.000
AP75:0.957
AP_large:0.854
AP_medium:0.794
AP_small:0.751
AR1:0.813
AR10:0.813
AR100:0.813
AR_large:0.867
AR_medium:0.804
AR_small:0.750
average_time_per_image:0.269

Method: SMESH

User andreacaraffa
Publication
Implementation
Training image modalities RGB
Test image modalities RGB
Description

Training data: real + provided PBR

Used 3D models: CAD models for T-LESS, default models for the other datasets.

Notes: a single model is trained across all BOP datasets. The approach builds on SAM3 and incorporates multi-view cues from CAD models to guide segmentation.

Authors: temporary anonymity

Computer specifications GPU L40S; CPU AMD EPYC 9474F @ 1.64GHz