Enhancing Long-Term Re-Identification Robustness Using Synthetic Data: A Comparative Analysis
Enhancing Long-Term Re-Identification Robustness Using Synthetic Data: A Comparative Analysis
This contribution explores the impact of synthetic training data usage and the prediction of material wear and aging in the context of re-identification. Different experimental setups and gallery set expanding strategies are tested, analyzing their impact on performance over time for aging re-identification subjects. Using a continuously updating gallery, we were able to increase our mean Rank-1 accuracy by 24%, as material aging was taken into account step by step. In addition, using models trained with 10% artificial training data, Rank-1 accuracy could be increased by up to 13%, in comparison to a model trained on only real-world data, significantly boosting generalized performance on hold-out data. Finally, this work introduces a novel, open-source re-identification dataset, pallet-block-2696. This dataset contains 2,696 images of Euro pallets, taken over a period of 4 months. During this time, natural aging processes occurred and some of the pallets were damaged during their usage. These wear and tear processes significantly changed the appearance of the pallets, providing a dataset that can be used to generate synthetically aged pallets or other wooden materials.
Rebecca Rademacher、Jér?me Rutinowski、Antonia Ponikarov、Stephan Matzke、Tim Chilla、Pia Schreynemackers、Alice Kirchheim、Christian Pionzewski
计算技术、计算机技术
Rebecca Rademacher,Jér?me Rutinowski,Antonia Ponikarov,Stephan Matzke,Tim Chilla,Pia Schreynemackers,Alice Kirchheim,Christian Pionzewski.Enhancing Long-Term Re-Identification Robustness Using Synthetic Data: A Comparative Analysis[EB/OL].(2025-04-25)[2025-05-25].https://arxiv.org/abs/2504.18286.点此复制
评论