Submission: GDRNPPDet_PBRReal/T-LESS

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Submission name
Submission time (UTC) Oct. 14, 2022, 12:21 p.m.
User zyMeteroid
Task 2D detection of seen objects
Dataset T-LESS
Training model type None
Training image type Synthetic + real
Description
Evaluation scores
AP:0.876
AP50:0.960
AP75:0.936
AP_large:0.921
AP_medium:0.837
AP_small:0.501
AR1:0.801
AR10:0.915
AR100:0.916
AR_large:0.959
AR_medium:0.874
AR_small:0.554
average_time_per_image:0.083

Method: GDRNPPDet_PBRReal

User zyMeteroid
Publication Not yet
Implementation Pytorch, code can be found at https://github.com/shanice-l/gdrnpp_bop2022
Training image modalities RGB
Test image modalities RGB
Description

GDRNPPDet for BOP2022

Authors: Xingyu Liu, Ruida Zhang, Chenyangguang Zhang, Bowen Fu, Jiwen Tang, Xiquan Liang, Jingyi Tang, Xiaotian Cheng, Yukang Zhang, Gu Wang, and Xiangyang Ji (Tsinghua University).

In the PBRReal setting, for LMO, HB, ICBIN and ITODD datasets, we only use the provided synthetic training data (PBR) in training. While for YCBV, TUDL, TLESS, we use the provided real data and synthetic data (PBR) in training. We trained one model for each dataset.

GDRNPPDet was based on YOLOX. We used stronger data augmentation and ranger optimizer.

Computer specifications GPU RTX 3090; CPU AMD EPYC 7H12 64-Core Processor.