/awesome-vehicle-re-identification

collection of dataset&paper&code on Vehicle Re-Identification

awesome-vehicle-re-identification

collection of dataset&paper&code on Vehicle Re-Identification

dataset

paper

  1. Orientation Invariant Feature Embedding and Spatial Temporal Regularization for Vehicle Re-Identification

    • Wang Z, Tang L, Liu X, et al. Orientation Invariant Feature Embedding and Spatial Temporal Regularization for Vehicle Re-identification[C]//Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition. 2017: 379-387. [pdf]
  2. Learning Deep Neural Networks for Vehicle Re-ID With Visual-Spatio-Temporal Path Proposals

    • Shen Y, Xiao T, Li H, et al. Learning Deep Neural Networks for Vehicle Re-ID With Visual-Spatio-Temporal Path Proposals[C]//Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition. 2017: 1900-1909.[pdf]
  3. Vehicle Re-Identification for Automatic Video Traffic Surveillance

    • Zapletal D, Herout A. Vehicle re-identification for automatic video traffic surveillance[C]//Computer Vision and Pattern Recognition Workshops (CVPRW), 2016 IEEE Conference on. IEEE, 2016: 1568-1574.[pdf]
  4. Exploiting Multi-Grain Ranking Constraints for Precisely Searching Visually-similar Vehicles

    • Yan K, Tian Y, Wang Y, et al. Exploiting Multi-Grain Ranking Constraints for Precisely Searching Visually-similar Vehicles[C]//Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition. 2017: 562-570.[pdf]
  5. Deep Relative Distance Learning- Tell the Difference Between Similar Vehicles

    • Liu H, Tian Y, Yang Y, et al. Deep relative distance learning: Tell the difference between similar vehicles[C]//Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition. 2016: 2167-2175.[pdf]
  6. A Deep Learning-Based Approach to Progressive Vehicle Re-identification for Urban Surveillance

    • Liu X, Liu W, Mei T, et al. A deep learning-based approach to progressive vehicle re-identification for urban surveillance[C]//European Conference on Computer Vision. Springer, Cham, 2016: 869-884.[paper]
  7. Large-Scale Vehicle Re-Identification in Urban Surveillance Videos

    • Liu X, Liu W, Ma H, et al. Large-scale vehicle re-identification in urban surveillance videos[C]//Multimedia and Expo (ICME), 2016 IEEE International Conference on. IEEE, 2016: 1-6.[paper]
  8. PROVID- Progressive and Multimodal Vehicle Reidentification for Large-Scale Urban Surveillance

    • Liu X, Liu W, Mei T, et al. PROVID: Progressive and Multimodal Vehicle Reidentification for Large-Scale Urban Surveillance[J]. IEEE Transactions on Multimedia, 2018, 20(3): 645-658.[paper]
  9. Group Sensitive Triplet Embedding for Vehicle Re-identification

    • Bai Y, Lou Y, Gao F, et al. Group Sensitive Triplet Embedding for Vehicle Re-identification[J]. IEEE Transactions on Multimedia, 2018.[paper]
  10. Improving triplet-wise training of convolutional neural network for vehicle re-identification

    • Zhang Y, Liu D, Zha Z J. Improving triplet-wise training of convolutional neural network for vehicle re-identification[C]//Multimedia and Expo (ICME), 2017 IEEE International Conference on. IEEE, 2017: 1386-1391.[paper]
  11. Multi-modal metric learning for vehicle re-identification in traffic surveillance environment

    • Tang Y, Wu D, Jin Z, et al. Multi-modal metric learning for vehicle re-identification in traffic surveillance environment[C]//Image Processing (ICIP), 2017 IEEE International Conference on. IEEE, 2017: 2254-2258.[paper]
  12. Vehicle re-identification by fusing multiple deep neural networks

    • Cui C, Sang N, Gao C, et al. Vehicle re-identification by fusing multiple deep neural networks[C]//Image Processing Theory, Tools and Applications (IPTA), 2017 Seventh International Conference on. IEEE, 2017: 1-6.[paper]
  13. Deep hashing with multi-task learning for large-scale instance-level vehicle search

    • Liang D, Yan K, Wang Y, et al. Deep hashing with multi-task learning for large-scale instance-level vehicle search[C]//Multimedia & Expo Workshops (ICMEW), 2017 IEEE International Conference on. IEEE, 2017: 192-197.[paper]