2022
DOI: 10.1002/int.22829
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Efficient virtual data search for annotation‐free vehicle reidentification

Abstract: Vehicle reidentification (re‐ID) is the task of retrieving the same vehicle across nonoverlapping cameras, which has made significant progress with the help of abundant manually annotated real images. To avoid the time‐consuming and tedious labeling of real images, virtual data sets with large‐scale synthetic images have recently been constructed to perform annotation‐free model training. However, current methods fail to exploit the potential of virtual data search, that is, searching valuable and representati… Show more

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Cited by 8 publications
(3 citation statements)
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“…Coreset selection is a long-standing learning problem that aims to select a subset of the most informative training samples for data-efficient learning (Das et al 2021;Wan et al 2023a). Early coreset selection methods were designed to accelerate the learning and clustering of machine algorithms, such as k-means and k-medians (Har-Peled and Kushal 2007), support vector machines (Tsang et al 2005), (1,1)…”
Section: Introductionmentioning
confidence: 99%
See 1 more Smart Citation
“…Coreset selection is a long-standing learning problem that aims to select a subset of the most informative training samples for data-efficient learning (Das et al 2021;Wan et al 2023a). Early coreset selection methods were designed to accelerate the learning and clustering of machine algorithms, such as k-means and k-medians (Har-Peled and Kushal 2007), support vector machines (Tsang et al 2005), (1,1)…”
Section: Introductionmentioning
confidence: 99%
“…Diversity Measurement Informative and easily accessible deep features are often adopted in selection methods (Guo, Zhao, and Bai 2022;Margatina et al 2021;Wan et al 2023bWan et al , 2022, which typically use the overall similarity metrics to calculate the similarity between deep features to measure the importance of the data, such as L1-norm, L2norm and cosine distance metric. Figure 2 illustrates their characteristics.…”
Section: Introductionmentioning
confidence: 99%
“…Diversity Measurement Informative and easily accessible deep features are often adopted in selection methods (Guo, Zhao, and Bai 2022;Margatina et al 2021;Wan et al 2023bWan et al , 2022, which typically use the overall similarity metrics to calculate the similarity between deep features to measure the importance of the data, such as L1-norm, L2norm and cosine distance metric. Figure 2 illustrates their characteristics.…”
Section: Introductionmentioning
confidence: 99%