JDAI-CV / VeRidataset

This is the project page for veri dataset which is a large scale image dataset for vehicle re-identification in urban traffic surveillance.
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1. VeRi dataset

(Please click here to the new webpage.)

To facilitate the research of vehicle re-identification (Re-Id), we build a large-scale benchmark dateset for vehicle Re-Id in the real-world urban surveillance scenario, named "VeRi". The featured properties of VeRi include:

    Image  Image

Recently, we release a large-scale Multi-grained Vehiclde Parsing dataset in the wild. Please refer to MVP to download it!

2. Download

To encourage related research, we will provide the dataset according to your request. Please email your full name and affiliation to the contact person (xinchenliu at bupt dot cn). We ask for your information only to make sure the dataset is used for non-commercial purposes. We will not give it to any third party or publish it publicly anywhere.

3. Citation

If you use the dataset, please kindly cite the following paper:

4. Code and Models

Now, the FastReID toolbox has supported the VeRi dataset with powerful models. Please refer to FsatReID.

5. State-of-the-art Results on the VeRi Dataset

Reference Year mAP Rank-1 Rank-5
[1] 2016 19.92 59.65 75.27
[2] 2016 27.77 61.44 78.78
[3] 2017 58.27 83.49 90.04
[4] 2017 57.4 86.59 92.85
[5] 2017 58.78 86.41 92.91
[6] 2017 51.42 68.30 89.70
[7] 2017 60.47 85.52 95.11
[8] 2018 53.42 81.56 95.11
[9] 2018 59.47 96.24 98.97
[10] 2018 61.5 88.6 94
[11] 2018 53.53 82.9 91.6
[12] 2018 61.32 85.92 91.84
[13] 2018 53.45 83.49 92.55
[14] 2018 61.11 89.27 94.76
[15] 2018 53.35 82.06 92.31
[16] 2018 49.3 88.56 -
[17] 2018 64.78 88.62 94.52
[18] 2018 25.12 60.83 78.55
[19] 2018 60.49 77.33 88.27
[20] 2019 62.62 90.58 97.14
[21] 2019 57.44 84.39 94.05
[22] 2019 67.55 90.23 96.42
[23] 2019 61.83 88.5 94.46
[24] 2019 67.6 90.2 -
[25] 2019 55.49 84.27 92.43
[26] 2019 74.3 94.3 98.7
[27] 2019 72.5 93.3 97.1
[28] 2019 71.88 92.86 96.97
[29] 2019 66.34 89.78 95.99
[30] 2019 66.35 90.17 94.34
[31] 2019 61.7 89.4 95.0
[32] 2020 75.9 95.8 -
[33] 2020 79.5 95.6 98.4
[34] 2020 68.9 94.0 97.6
[35] 2020 79.6 96.4 98.6
[36] 2020 78.6 95.4 98.4
[37]* 2020 83.41 96.78 -
Ours 2020 81.9 97.9 99.0
[38] 2021 79.5 96.0 98.5
[39]** 2021 82.0 97.1 -
[40] 2021 81.0 96.7 98.6

* This method [37] uses large additional data from other datasets.

** This method [39] uses 384x128 input, camera labels, and viewpoint labels.

6. Our Results on Six Datasets

Image Image

Reference

[1] Liu, Xinchen, et al. "Large-scale vehicle re-identification in urban surveillance videos." ICME 2016.

[2] Liu, Xinchen, et al. "A deep learning-based approach to progressive vehicle re-identification for urban surveillance." ECCV 2016.

[3] Liu, Wu, et al. "Beyond human-level license plate super-resolution with progressive vehicle search and domain priori GAN." ACMMM 2017.

[4] Shen, Yantao, et al. "Learning deep neural networks for vehicle re-id with visual-spatio-temporal path proposals." ICCV 2017.

[5] Zhang, Yiheng, Dong Liu, and Zheng-Jun Zha. "Improving triplet-wise training of convolutional neural network for vehicle re-identification." ICME 2017.

[6] Wang, Zhongdao, et al. "Orientation invariant feature embedding and spatial temporal regularization for vehicle re-identification." ICCV 2017.

[7] Tang, Yi, et al. "Multi-modal metric learning for vehicle re-identification in traffic surveillance environment." ICIP 2017.

[8] Liu, Xinchen, et al. "PROVID: Progressive and multimodal vehicle reidentification for large-scale urban surveillance." IEEE TMM 20.3 (2018): 645-658.

[9] Bai, Yan, et al. "Group-Sensitive Triplet Embedding for Vehicle Reidentification." IEEE TMM 20.9 (2018): 2385-2399.

[10] Liu, Xiaobin, et al. "Ram: a region-aware deep model for vehicle re-identification." ICME 2018.

[11] Zhu, Jianqing, et al. "Joint feature and similarity deep learning for vehicle re-identification." IEEE Access 6 (2018): 43724-43731.

[12] Zhou, Yi, and Ling Shao. "Aware attentive multi-view inference for vehicle re-identification." CVPR 2018.

[13] Zhu, Jianqing, et al. "A shortly and densely connected convolutional neural network for vehicle re-identification." ICPR 2018.

[14] Jiang, Na, et al. "Multi-Attribute Driven Vehicle Re-Identification with Spatial-Temporal Re-Ranking." ICIP 2018.

[15] Wu, Chih-Wei, et al. "Vehicle re-identification with the space-time prior." CVPRW 2018.

[16] Kanaci, Aytac, Xiatian Zhu, and Shaogang Gong. "Vehicle Re-Identification in Context." arXiv preprint arXiv:1809.09409(2018).

[17] Wu, Fangyu, et al. "Joint Semi-supervised Learning and Re-ranking for Vehicle Re-identification." ICPR 2018.

[18] Zhou, Yi, Li Liu, and Ling Shao. "Vehicle re-identification by deep hidden multi-view inference." IEEE TIP 27.7 (2018): 3275-3287.

[19] Zhou, Yi, and Ling Shao. "Vehicle Re-Identification by Adversarial Bi-Directional LSTM Network." WACV 2018.

[20] Liu, Xinchen, et al. "PVSS: A Progressive Vehicle Search System for Video Surveillance Networks." arXiv preprint arXiv:1901.03062 (2019).

[21] Lou, Yihang, et al. "Embedding Adversarial Learning for Vehicle Re-Identification." IEEE TIP (2019).

[22] Kumar, Ratnesh, et al. "Vehicle Re-Identification: an Efficient Baseline Using Triplet Embedding." arXiv preprint arXiv:1901.01015 (2019).

[23] Zhu, Jianqing, et al. "Vehicle Re-Identification Using Quadruple Directional Deep Learning Features." IEEE TITS (2019).

[24] Tang, Zheng, et al. "CityFlow: A City-Scale Benchmark for Multi-Target Multi-Camera Vehicle Tracking and Re-Identification." CVPR (2019).

[25] Lou, Yihang, et al. "VERI-Wild: A Large Dataset and a New Method for Vehicle Re-Identification in the Wild." IEEE CVPR (2019).

[26] He, Bing, et al. "Part-regularized Near-duplicate Vehicle Re-identification." IEEE CVPR (2019).

[27] Qian, Jingjing, et al. "Stripe-based and Attribute-aware Network: A Two-Branch Deep Model for Vehicle Re-identification." arXiv (2019).

[28] Tang, Zheng, et al. "PAMTRI: Pose-Aware Multi-Task Learning for Vehicle Re-Identification Using Highly Randomized Synthetic Data." IEEE ICCV (2019).

[29] Chu, Ruihang, et al. "Vehicle Re-identification with Viewpoint-aware Metric Learning." IEEE ICCV (2019).

[30] Pirazh Khorramshahi et al. "A Dual-Path Model With Adaptive Attention For Vehicle Re-Identification." IEEE ICCV (2019).

[31] Xiaobin Liu, Shiliang Zhang, Xiaoyu Wang, Richang Hong, Qi Tian: Group-Group Loss-Based Global-Regional Feature Learning for Vehicle Re-Identification. IEEE TIP (2020).

[32] Xin Jin, Cuiling Lan, Wenjun Zeng, Zhibo Chen: Uncertainty-Aware Multi-Shot Knowledge Distillation for Image-Based Object Re-Identification. AAAI 2020: 11165-11172

[33] Dechao Meng, et al. Parsing-based View-aware Embedding Network for Vehicle Re-Identification. IEEE CVPR (2020).

[34] Tsai-Shien Chen, et al. Orientation-aware Vehicle Re-identification with Semantics-guided Part Attention Network. ECCV (2020).

[35] Pirazh Khorramshahi, et al. The Devil is in the Details: Self-Supervised Attention for Vehicle Re-Identification. ECCV (2020).

[36] Xinchen Liu, et al. Beyond the Parts: Learning Multi-view Cross-part Correlation for Vehicle Re-identification. ACM MM (2020).

[37] Zhedong Zheng, et al. VehicleNet: Learning Robust Visual Representation for Vehicle Re-identification. IEEE Trans. Multimedia (2020).

[38] Wei Sun, et al. TBE-Net: A Three-Branch Embedding Network With Part-Aware Ability and Feature Complementary Learning for Vehicle Re-Identification . IEEE Transactions on Intelligent Transportation Systems (2021).

[39] Shuting He, et al. TransReID: Transformer-based Object Re-Identification. ICCV (2021).

[40] Ming Li, et al. Self-supervised Geometric Features Discovery via Interpretable Attention for Vehicle Re-Identification and Beyond. ICCV (2021).

Last modified in Dec, 2021