1.浙江大学控制科学与工程学院,浙江杭州 310027
2.浙江水利水电学院计算机科学与技术学院,浙江杭州 310018
[ "励志勇 男,1998年12月出生于四川省成都市.现为浙江大学控制科学与工程学院博士研究生.主要研究方向为计算机视觉与行人重识别.E-mail: lizhiyong_zju@zju.edu.cn" ]
[ "姜伟 男,1969年11月出生于黑龙江省哈尔滨市.现为浙江水利水电学院教授.主要研究方向为机器视觉、计算机图形学与机器学习.E-mail: jiangwei_zju@zju.edu.cn" ]
[ "刘浩杰 男,1997年9月出生于江苏省南通市.现为浙江大学控制科学与工程学院博士研究生.主要研究方向为行人重识别、多模态大模型.E-mail: liuhaojie@zju.edu.cn" ]
收稿:2025-09-13,
录用:2025-12-05,
纸质出版:2025-12-25
移动端阅览
励志勇, 姜伟, 刘浩杰. 可见光-红外跨模态行人重识别研究综述[J]. 电子学报, 2025, 53(12): 4811-4832.
LI Zhi-yong, JIANG Wei, LIU Hao-jie. A Survey on Visible-Infrared Cross-Modality Person Re-Identification[J]. Acta Electronica Sinica, 2025, 53(12): 4811-4832.
励志勇, 姜伟, 刘浩杰. 可见光-红外跨模态行人重识别研究综述[J]. 电子学报, 2025, 53(12): 4811-4832. DOI:10.12263/DZXB.20250800
LI Zhi-yong, JIANG Wei, LIU Hao-jie. A Survey on Visible-Infrared Cross-Modality Person Re-Identification[J]. Acta Electronica Sinica, 2025, 53(12): 4811-4832. DOI:10.12263/DZXB.20250800
行人重识别(Person Re-identification,ReID)作为智能视频监控系统的核心技术,其核心任务是在非重叠视域的摄像头网络中实现对特定目标行人的高效检索与匹配.然而,传统仅依赖可见光图像的方法在夜间或低照度等复杂光照条件下性能显著下降.为应对这一挑战,可见光-红外行人重识别(Visible-Infrared Person Re-identification,VI-ReID)应运而生,旨在实现可见光图像与红外图像之间的交叉检索.该任务不仅继承了单模态行人重识别中姿态变化、视角差异和遮挡等固有难题,更需克服由成像机理不同所导致的巨大跨模态鸿沟.本文对近年来基于深度学习的可见光-红外跨模态行人重识别方法进行了系统性梳理、归纳与评述,将现有主流方法划分为三大核心类别:(1)基于跨模态网络结构设计的方法,通过精心构造网络架构以提取模态不变的身份特征,具体包括双流特征提取网络、身份信息解耦模块、细粒度特征对齐,以及利用网络结构搜索等设计方法;(2)生成式学习方法,旨在通过模态转换或数据增强弥合模态间差距,涵盖单向或双向图像生成、构建统一中间模态,以及在特征层面进行生成与补偿等策略;(3)基于跨模态相似度学习的方法,聚焦于损失函数与度量学习的设计,通过拉近跨模态正样本对的距离并推开负样本对,主要包括基于样本或中心(代理)的对比学习,以及针对测试阶段优化的跨模态重排序算法.此外,考虑到实际应用中标注成本高昂且标签可能存在噪声或缺失,本文进一步深入探讨了非完全有监督学习范式下的研究进展,系统总结了噪声标签学习、半监督学习及无监督学习等方向所面临的独特挑战与代表性解决方案.为全面评估各类算法的性能,本文在SYSU-MM01、RegDB和LLCM公开数据集上,对不同监督范式下的代表性算法进行了统一的性能对比与分析.最后,本文立足于当前研究的技术瓶颈,对未来发展趋势进行了展望,指出构建更贴近真实场景的多样化数据集、缓解模态数据不平衡问题、推动模型轻量化部署、探索可持续或终身学习机制,以及拓展至视频级或多源异构信息融合的行人重识别等方向将是该领域极具潜力的研究热点,旨在为后续学者提供有价值的理论参考与技术指引.
Person re-identification (ReID) is a core technology in intelligent video surveillance systems
with the fundamental objective of efficiently retrieving and matching a specific pedestrian across camera networks with non-overlapping fields of view. However
traditional approaches that rely solely on visible images suffer severe performance degradation under challenging illumination conditions such as nighttime or low-light environments. To address this limitation
visible-infrared person re-identification (VI-ReID) has emerged
aiming to enable cross-modal retrieval between visible and infrared images. This task not only inherits classic challenges from unimodal ReID—such as pose variations
viewpoint changes
and occlusions—but also faces a significant cross-modal discrepancy arising from the intrinsic differences in imaging mechanisms. This paper provides a systematic survey
comprehensive synthesis
and critical review of recent deep learning-based methods for VI-ReID. We categorize existing mainstream approaches into three major groups: (1) cross-modal network architecture design
which constructs specialized network structures to extract modality-invariant identity features
including dual-stream feature extraction networks
identity disentanglement modules
fine-grained feature alignment strategies
and architecture search-based designs; (2) generative learning methods
which seek to bridge the modality gap through modality translation or data augmentation
covering unidirectional or bidirectional image generation
construction of unified intermediate modalities
and feature-level generation and compensation techniques; (3) cross-modal similarity learning
which focuses on designing loss functions and metric learning schemes to pull together positive cross-modal pairs while pushing apart negative ones
primarily encompassing sample- or proxy-based contrastive learning and test-time optimized cross-modal re-ranking algorithms. Moreover
recognizing the high cost of annotation and the prevalence of noisy or incomplete labels in real-world applications
this survey further investigates advances under non-fully-supervised learning paradigms
systematically summarizing the unique challenges and representative solutions in noisy-label learning
semi-supervised learning
and unsupervised learning. To offer a holistic performance evaluation
we conduct unified comparisons and analyses of representative algorithms under different supervision settings on widely adopted public benchmarks—SYSU-MM01
RegDB
and LLCM. Finally
grounded in current technical bottlenecks
we outline promising future directions
including the development of more realistic and diverse datasets
mitigation of modality imbalance
lightweight model deployment
exploration of sustainable or lifelong learning mechanisms
and extension toward video-based or multi-source heterogeneous information-fused ReID. This survey aims to serve as a valuable theoretical reference and technical guide for future researchers in the field.
罗浩 , 姜伟 , 范星 , 等 . 基于深度学习的行人重识别研究进展 [J ] . 自动化学报 , 2019 , 45 ( 11 ): 2032 - 2049 .
LUO H , JIANG W , FAN X , et al . A survey on deep learning based person re-identification [J ] . Acta Automatica Sinica , 2019 , 45 ( 11 ): 2032 - 2049 . (in Chinese)
WU A C , ZHENG W S , YU H X , et al . RGB-infrared cross-modality person re-identification [C ] // 2017 IEEE International Conference on Computer Vision . Piscataway : IEEE , 2017 : 5390 - 5399 .
YE M , LAN X Y , LI J W , et al . Hierarchical discriminative learning for visible thermal person re-identification [C ] // AAAI’18/IAAI’18/EAAI’18: Proceedings of the Thirty-Second AAAI Conference on Artificial Intelligence and Thirtieth Innovative Applications of Artificial Intelligence Conference and Eighth AAAI Symposium on Educational Advances in Artificial Intelligence . New York : ACM , 2018 : 7501 - 7508 .
FENG Z X , LAI J H , XIE X H . Learning modality-specific representations for visible-infrared person re-identification [J ] . IEEE Transactions on Image Processing , 2020 , 29 : 579 - 590 .
YE M , LAN X Y , LENG Q M , et al . Cross-modality person re-identification via modality-aware collaborative ensemble learning [J ] . IEEE Transactions on Image Processing , 2020 , 29 : 9387 - 9399 .
YE M , SHEN J B , LIN G J , et al . Deep learning for person re-identification: A survey and outlook [J ] . IEEE Transactions on Pattern Analysis and Machine Intelligence , 2022 , 44 ( 6 ): 2872 - 2893 .
LIU H J , TAN X H , ZHOU X C . Parameter sharing exploration and hetero-center triplet loss for visible-thermal person re-identification [J ] . IEEE Transactions on Multimedia , 2021 , 23 : 4414 - 4425 .
LU Y , WU Y , LIU B , et al . Cross-modality person re-identification with shared-specific feature transfer [C ] // 2020 IEEE/CVF Conference on Computer Vision and Pattern Recognition . Piscataway : IEEE , 2020 : 13376 - 13386 .
ZHAO J Q , WANG H Z , ZHOU Y , et al . Spatial-channel enhanced transformer for visible-infrared person re-identification [J ] . IEEE Transactions on Multimedia , 2023 , 25 : 3668 - 3680 .
JIANG K Z , ZHANG T Z , LIU X , et al . Cross-modality transformer for visible-infrared person re-identification [C ] // Computer Vision - ECCV 2022 . Cham : Springer , 2022 : 480 - 496 .
CHAI Z H , LING Y G , LUO Z M , et al . Dual-stream transformer with distribution alignment for visible-infrared person re-identification [J ] . IEEE Transactions on Circuits and Systems for Video Technology , 2023 , 33 ( 11 ): 6764 - 6776 .
HUA X C , CHENG K , LU H , et al . MSCMNet: Multi-scale semantic correlation mining for visible-infrared person re-identification [J ] . Pattern Recognition , 2025 , 159 : 111090 .
QIU L X , CHEN S , YAN Y , et al . High-order structure based middle-feature learning for visible-infrared person re-identification [J ] . Proceedings of the AAAI Conference on Artificial Intelligence , 2024 , 38 ( 5 ): 4596 - 4604 .
PU N , CHEN W , LIU Y , et al . Dual Gaussian-based variational subspace disentanglement for visible-infrared person re-identification [C ] // Proceedings of the 28th ACM International Conference on Multimedia . New York : ACM , 2020 : 2149 - 2158 .
KANSAL K , SUBRAMANYAM A V , WANG Z , et al . SDL: Spectrum-disentangled representation learning for visible-infrared person re-identification [J ] . IEEE Transactions on Circuits and Systems for Video Technology , 2020 , 30 ( 10 ): 3422 - 3432 .
HAO X , ZHAO S Y , YE M , et al . Cross-modality person re-identification via modality confusion and center aggregation [C ] // 2021 IEEE/CVF International Conference on Computer Vision . Piscataway : IEEE , 2022 : 16383 - 16392 .
REN K J , ZHANG L . Implicit discriminative knowledge learning for visible-infrared person re-identification [C ] // 2024 IEEE/CVF Conference on Computer Vision and Pattern Recognition . Piscataway : IEEE , 2024 : 393 - 402 .
WU Q , DAI P Y , CHEN J , et al . Discover cross-modality nuances for visible-infrared person re-identification [C ] // 2021 IEEE/CVF Conference on Computer Vision and Pattern Recognition . Piscataway : IEEE , 2021 : 4328 - 4337 .
ZHANG Y K , YAN Y , LI J , et al . MRCN: A novel modality restitution and compensation network for visible-infrared person re-identification [J ] . Proceedings of the AAAI Conference on Artificial Intelligence , 2023 , 37 ( 3 ): 3498 - 3506 .
DING H , SUN J , LONG R , et al . Visible-infrared person re-identification based on feature decoupling and refinement [J ] . ACM Transactions on Multimedia Computing, Communications, and Applications , 2025 , 21 ( 9 ): 1 - 16 .
SUN Y F , ZHENG L , YANG Y , et al . Beyond part models: Person retrieval with refined part pooling (and a strong convolutional baseline) [C ] // Computer Vision - ECCV 2018 . Cham : Springer , 2018 : 501 - 518 .
ZHANG L Y , DU G D , LIU F , et al . Global-local multiple granularity learning for cross-modality visible-infrared person reidentification [J ] . IEEE Transactions on Neural Networks and Learning Systems , 2025 , 36 ( 3 ): 4209 - 4219 .
PARK H , LEE S , LEE J , et al . Learning by aligning: Visible-infrared person re-identification using cross-modal correspondences [C ] // 2021 IEEE/CVF International Conference on Computer Vision . Piscataway : IEEE , 2022 : 12026 - 12035 .
KIM M , KIM S , PARK J , et al . PartMix: Regularization strategy to learn part discovery for visible-infrared person re-identification [C ] // 2023 IEEE/CVF Conference on Computer Vision and Pattern Recognition . Piscataway : IEEE , 2023 : 18621 - 18632 .
YE M , SHEN J B , CRANDALL D J , et al . Dynamic dual-attentive aggregation learning for visible-infrared person re-identification [C ] // Computer Vision - ECCV 2020 . Cham : Springer , 2020 : 229 - 247 .
YANG X , LIU H L , WANG N N , et al . Bidirectional modality information interaction for Visible-Infrared Person re-identification [J ] . Pattern Recognition , 2025 , 161 : 111301 .
WANG R , PI D C , YU R , et al . Dimension-driven feature complementation for visible-infrared person re-identification [J ] . Neurocomputing , 2025 , 653 : 131162 .
MIAO Y Q , HUANG N C , MA X , et al . On exploring pose estimation as an auxiliary learning task for visible-Infrared Person re-identification [J ] . Neurocomputing , 2023 , 556 : 126652 .
CHEN C Q , YE M , QI M B , et al . Structure-aware positional transformer for visible-infrared person re-identification [J ] . IEEE Transactions on Image Processing , 2022 , 31 : 2352 - 2364 .
LIU M , SUN Y Q , WANG X P , et al . Pose-guided modality-invariant feature alignment for visible-infrared object re-identification [J ] . IEEE Transactions on Instrumentation and Measurement , 2024 , 73 : 5017610 .
孙锐 , 张磊 , 余益衡 , 等 . 基于局部异构聚合图卷积网络的跨模态行人重识别 [J ] . 电子学报 , 2023 , 51 ( 4 ): 810 - 825 .
SUN R , ZHANG L , YU Y H , et al . Cross-modality person re-identification based on locally heterogeneous polymerization graph convolutional network [J ] . Acta Electronica Sinica , 2023 , 51 ( 4 ): 810 - 825 . (in Chinese)
LIN Y T , ZHENG L , ZHENG Z D , et al . Improving person re-identification by attribute and identity learning [J ] . Pattern Recognition , 2019 , 95 : 151 - 161 .
ZHENG A H , FENG M Y , PAN P , et al . Attributes based visible-infrared person re-identification [C ] // Pattern Recognition and Computer Vision . Cham : Springer , 2022 : 254 - 266 .
DU Y H , ZHAO Z C , SU F . YYDS: Visible-infrared person re-identification with coarse descriptions [EB/OL ] . ( 2024-03-07 )[ 2025-09-30 ] . https://arXiv.org/abs/2403.04183 https://arXiv.org/abs/2403.04183 .
YU X Y , DONG N , ZHU L H , et al . CLIP-driven semantic discovery network for visible-infrared person re-identification [J ] . IEEE Transactions on Multimedia , 2025 , 27 : 4137 - 4150 .
HU Z Y , YANG B , YE M . Empowering visible-infrared person re-identification with large foundation models [C ] // Advances in Neural Information Processing Systems 37 . San Diego : NeurIPS , 2024 : 117363 - 117387 .
FU C Y , HU Y B , WU X , et al . CM-NAS: Cross-modality neural architecture search for visible-infrared person re-identification [C ] // 2021 IEEE/CVF International Conference on Computer Vision . Piscataway : IEEE , 2022 : 11803 - 11812 .
ZOPH B , LE Q V . Neural architecture search with reinforcement learning [EB/OL ] . ( 2017-02-15 )[ 2025-09-30 ] . https://arXiv.org/abs/1611.01578 https://arXiv.org/abs/1611.01578 .
CHEN Y , WAN L , LI Z H , et al . Neural feature search for RGB-infrared person re-identification [C ] // 2021 IEEE/CVF Conference on Computer Vision and Pattern Recognition . Piscataway : IEEE , 2021 : 587 - 597 .
ZHONG X , LU T Y , HUANG W X , et al . Visible-infrared person re-identification via colorization-based Siamese generative adversarial network [C ] // Proceedings of the 2020 International Conference on Multimedia Retrieval . New York : ACM , 2020 : 421 - 427 .
ZHONG X , LU T Y , HUANG W X , et al . Grayscale enhancement colorization network for visible-infrared person re-identification [J ] . IEEE Transactions on Circuits and Systems for Video Technology , 2022 , 32 ( 3 ): 1418 - 1430 .
WANG G A , ZHANG T Z , CHENG J , et al . RGB-infrared cross-modality person re-identification via joint pixel and feature alignment [C ] // 2019 IEEE/CVF International Conference on Computer Vision . Piscataway : IEEE , 2020 : 3622 - 3631 .
LIU H J , MA S , XIA D X , et al . SFANet: A spectrum-aware feature augmentation network for visible-infrared person reidentification [J ] . IEEE Transactions on Neural Networks and Learning Systems , 2023 , 34 ( 4 ): 1958 - 1971 .
LIU H J , XIA D X , JIANG W . Towards homogeneous modality learning and multi-granularity information exploration for visible-infrared person re-identification [J ] . IEEE Journal of Selected Topics in Signal Processing , 2023 , 17 ( 3 ): 545 - 559 .
张玉康 , 谭磊 , 陈靓影 . 基于图像和特征联合约束的跨模态行人重识别 [J ] . 自动化学报 , 2021 , 47 ( 8 ): 1943 - 1950 .
ZHANG Y K , TAN L , CHEN J Y . Cross-modality person re-identification based on joint constraints of image and feature [J ] . Acta Automatica Sinica , 2021 , 47 ( 8 ): 1943 - 1950 . (in Chinese)
WANG Z X , WANG Z , ZHENG Y Q , et al . Learning to reduce dual-level discrepancy for infrared-visible person re-identification [C ] // 2019 IEEE/CVF Conference on Computer Vision and Pattern Recognition . Piscataway : IEEE , 2020 : 618 - 626 .
WANG G A , ZHANG T Z , YANG Y , et al . Cross-modality paired-images generation for RGB-infrared person re-identification [J ] . Proceedings of the AAAI Conference on Artificial Intelligence , 2020 , 34 ( 7 ): 12144 - 12151 .
CHOI S , LEE S , KIM Y , et al . Hi-CMD: Hierarchical cross-modality disentanglement for visible-infrared person re-identification [C ] // 2020 IEEE/CVF Conference on Computer Vision and Pattern Recognition . Piscataway : IEEE , 2020 : 10254 - 10263 .
LI D G , WEI X , HONG X P , et al . Infrared-visible cross-modal person re-identification with an X modality [J ] . Proceedings of the AAAI Conference on Artificial Intelligence , 2020 , 34 ( 4 ): 4610 - 4617 .
YE M , SHEN J B , SHAO L . Visible-infrared person re-identification via homogeneous augmented tri-modal learning [J ] . IEEE Transactions on Information Forensics and Security , 2021 , 16 : 728 - 739 .
ZHANG Y K , YAN Y , LU Y , et al . Towards a unified middle modality learning for visible-infrared person re-identification [C ] // Proceedings of the 29th ACM International Conference on Multimedia . New York : ACM , 2021 : 788 - 796 .
LIU J C , SONG W R , CHEN C H , et al . Cross-modality person re-identification via channel-based partition network [J ] . Applied Intelligence , 2022 , 52 ( 3 ): 2423 - 2435 .
YE M , RUAN W J , DU B , et al . Channel augmented joint learning for visible-infrared recognition [C ] // 2021 IEEE/CVF International Conference on Computer Vision . Piscataway : IEEE , 2022 : 13547 - 13556 .
CUI Z Y , ZHOU J H , PENG Y X . DMA: Dual modality-aware alignment for visible-infrared person re-identification [J ] . IEEE Transactions on Information Forensics and Security , 2024 , 19 : 2696 - 2708 .
ZHANG Q , LAI C Z , LIU J N , et al . FMCNet: Feature-level modality compensation for visible-infrared person re-identification [C ] // 2022 IEEE/CVF Conference on Computer Vision and Pattern Recognition . Piscataway : IEEE , 2022 : 7339 - 7348 .
ZHANG Y K , WANG H Z . Diverse embedding expansion network and low-light cross-modality benchmark for visible-infrared person re-identification [C ] // 2023 IEEE/CVF Conference on Computer Vision and Pattern Recognition . Piscataway : IEEE , 2023 : 2153 - 2162 .
YU H , CHENG X , PENG W , et al . Modality unifying network for visible-infrared person re-identification [C ] // 2023 IEEE/CVF International Conference on Computer Vision . Piscataway : IEEE , 2024 : 11151 - 11161 .
LIU H J , GU J Y , LI Z Y , et al . CoMix: Collaborative mixed learning via style fuzzy normalization for visible-infrared person re-identification [J ] . IEEE Transactions on Systems, Man, and Cybernetics: Systems , 2025 , 55 ( 11 ): 8572 - 8586 .
LI J R , ZHEN Q , YANG Y L , et al . Prototype-driven multi-feature generation for visible-infrared person re-identification [C ] // ICASSP 2025 - 2025 IEEE International Conference on Acoustics, Speech and Signal Processing . Piscataway : IEEE , 2025 : 1 - 5 .
YE M , WANG Z , LAN X Y , et al . Visible thermal person re-identification via dual-constrained top-ranking [C ] // Proceedings of the Twenty-Seventh International Joint Conference on Artificial Intelligence . California : AAAI , 2018 : 1092 - 1099 .
WU A C , ZHENG W S , GONG S G , et al . RGB-IR person re-identification by cross-modality similarity preservation [J ] . International Journal of Computer Vision , 2020 , 128 ( 6 ): 1765 - 1785 .
YE M , LAN X Y , WANG Z , et al . Bi-directional center-constrained top-ranking for visible thermal person re-identification [J ] . IEEE Transactions on Information Forensics and Security , 2020 , 15 : 407 - 419 .
YE H R , LIU H , MENG F Y , et al . Bi-directional exponential angular triplet loss for RGB-infrared person re-identification [J ] . IEEE Transactions on Image Processing , 2021 , 30 : 1583 - 1595 .
CAI X , LIU L , ZHU L , et al . Dual-modality hard mining triplet-center loss for visible infrared person re-identification [J ] . Knowledge-Based Systems , 2021 , 215 : 106772 .
HAO Y , WANG N N , LI J , et al . HSME: Hypersphere manifold embedding for visible thermal person re-identification [J ] . Proceedings of the AAAI Conference on Artificial Intelligence , 2019 , 33 ( 1 ): 8385 - 8392 .
JIA M X , ZHAI Y P , LU S J , et al . A similarity inference metric for RGB-infrared cross-modality person re-identification [EB/OL ] . ( 2020-07-03 )[ 2025-09-30 ] . https://arXiv.org/abs/2007.01504 https://arXiv.org/abs/2007.01504 .
LIU J L , SUN Y F , ZHU F , et al . Learning memory-augmented unidirectional metrics for cross-modality person re-identification [C ] // 2022 IEEE/CVF Conference on Computer Vision and Pattern Recognition . Piscataway : IEEE , 2022 : 19344 - 19353 .
ZHU Y X , YANG Z , WANG L , et al . Hetero-Center loss for cross-modality person re-identification [J ] . Neurocomputing , 2020 , 386 : 97 - 109 .
周非 , 舒浩峰 , 白梦林 , 等 . 生成对抗网络协同角度异构中心三元组损失的跨模态行人重识别 [J ] . 电子学报 , 2023 , 51 ( 7 ): 1803 - 1811 .
ZHOU F , SHU H F , BAI M L , et al . Cross-modal person re-identification based on generative adversarial network coordinated with angle based heterogeneous center triplet loss [J ] . Acta Electronica Sinica , 2023 , 51 ( 7 ): 1803 - 1811 . (in Chinese)
WANG X J , CHEN C Q , ZHU Y , et al . Feature fusion and center aggregation for visible-infrared person re-identification [J ] . IEEE Access , 2022 , 10 : 30949 - 30958 .
KONG J , HE Q B , JIANG M , et al . Dynamic center aggregation loss with mixed modality for visible-infrared person re-identification [J ] . IEEE Signal Processing Letters , 2021 , 28 : 2003 - 2007 .
ZHONG Z , ZHENG L , CAO D L , et al . Re-ranking person re-identification with k-reciprocal encoding [C ] // 2017 IEEE Conference on Computer Vision and Pattern Recognition . Piscataway : IEEE , 2017 : 3652 - 3661 .
LIANG W Q , WANG G C , LAI J H , et al . Homogeneous-to-heterogeneous: Unsupervised learning for RGB-infrared person re-identification [J ] . IEEE Transactions on Image Processing , 2021 , 30 : 6392 - 6407 .
YANG M X , HUANG Z Y , HU P , et al . Learning with twin noisy labels for visible-infrared person re-identification [C ] // 2022 IEEE/CVF Conference on Computer Vision and Pattern Recognition . Piscataway : IEEE , 2022 : 14288 - 14297 .
YANG M X , HUANG Z Y , PENG X . Robust object re-identification with coupled noisy labels [J ] . International Journal of Computer Vision , 2024 , 132 ( 7 ): 2511 - 2529 .
ZHANG R H , CAO Z , HUANG Y , et al . Visible-infrared person re-identification with real-world label noise [J ] . IEEE Transactions on Circuits and Systems for Video Technology , 2025 , 35 ( 5 ): 4857 - 4869 .
HUANG H , HUANG Y , WANG L . VI-diff: Unpaired visible-infrared translation diffusion model for single modality labeled visible-infrared person re-identification [EB/OL ] . ( 2023-10-06 )[ 2025-9-30 ] . https://arXiv.org/abs/2310.04122 https://arXiv.org/abs/2310.04122 .
WANG J M , ZHANG Z Z , CHEN M G , et al . Optimal transport for label-efficient visible-infrared person re-identification [M ] // Computer Vision - ECCV 2022 . Cham : Springer , 2022 : 93 - 109 .
SHI J M , ZHANG Y C , YIN X B , et al . Dual pseudo-labels interactive self-training for semi-supervised visible-infrared person re-identification [C ] // 2023 IEEE/CVF International Conference on Computer Vision . Piscataway : IEEE , 2024 : 11184 - 11194 .
ZHENG X Y , ZHANG Y K , LU Y , et al . Semi-supervised visible-infrared person re-identification via modality unification and confidence guidance [C ] // Proceedings of the 32nd ACM International Conference on Multimedia . New York : ACM , 2024 : 5761 - 5770 .
YANG B , CHEN J , MA X Z , et al . Translation, association and augmentation: Learning cross-modality re-identification from single-modality annotation [J ] . IEEE Transactions on Image Processing , 2023 , 32 : 5099 - 5113 .
孙锐 , 谢瑞瑞 , 张磊 , 等 . 基于灾难性遗忘及组合叠加擦除的跨模态行人重识别预训练方法 [J ] . 电子学报 , 2023 , 51 ( 10 ): 2925 - 2935 .
SUN R , XIE R R , ZHANG L , et al . Cross-modal pedestrian re-identification pre-training method based on catastrophic forgetting and combination superimposed erasure [J ] . Acta Electronica Sinica , 2023 , 51 ( 10 ): 2925 - 2935 . (in Chinese)
YANG B , YE M , CHEN J , et al . Augmented dual-contrastive aggregation learning for unsupervised visible-infrared person re-identification [C ] // Proceedings of the 30th ACM International Conference on Multimedia . New York : ACM , 2022 : 2843 - 2851 .
WU Z S , YE M . Unsupervised visible-infrared person re-identification via progressive graph matching and alternate learning [C ] // 2023 IEEE/CVF Conference on Computer Vision and Pattern Recognition . Piscataway : IEEE , 2023 : 9548 - 9558 .
LI Z Y , LIU H J , PENG X T , et al . Inter-intra modality knowledge learning and clustering noise alleviation for unsupervised visible-infrared person re-identification [J ] . IEEE Transactions on Knowledge and Data Engineering , 2024 , 36 ( 8 ): 3934 - 3947 .
SHI J M , YIN X B , ZHANG Y C , et al . Learning commonality, divergence and variety for unsupervised visible-infrared person re-identification [EB/OL ] . ( 2024-10-24 )[ 2025-10-10 ] . https://arxiv.org/abs/2402.19026 https://arxiv.org/abs/2402.19026 .
PANG Z Q , WANG C Y , ZHAO L L , et al . Augmented and softened matching for unsupervised visible-infrared person re-identification [C ] // Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV) . Piscataway : IEEE , 2025 : 11100 - 11109 .
NGUYEN D T , HONG H G , KIM K W , et al . Person recognition system based on a combination of body images from visible light and thermal cameras [J ] . Sensors , 2017 , 17 ( 3 ): 605 .
HU W P , LIU B H , ZENG H T , et al . Adversarial decoupling and modality-invariant representation learning for visible-infrared person re-identification [J ] . IEEE Transactions on Circuits and Systems for Video Technology , 2022 , 32 ( 8 ): 5095 - 5109 .
LIU Q , HE X H , ZHANG M Z , et al . Feature separation and double causal comparison loss for visible and infrared person re-identification [J ] . Knowledge-Based Systems , 2022 , 239 : 108042 .
ZHANG Y Y , ZHAO S Y , KANG Y H , et al . Modality synergy complement learning with cascaded aggregation for visible-infrared person re-identification [C ] // Computer Vision - ECCV 2022 . Cham : Springer , 2022 : 462 - 479 .
FENG J W , WU A C , ZHENG W S . Shape-erased feature learning for visible-infrared person re-identification [C ] // 2023 IEEE/CVF Conference on Computer Vision and Pattern Recognition . Piscataway : IEEE , 2023 : 22752 - 22761 .
LIU J N , WANG J L , HUANG N C , et al . Revisiting modality-specific feature compensation for visible-infrared person re-identification [J ] . IEEE Transactions on Circuits and Systems for Video Technology , 2022 , 32 ( 10 ): 7226 - 7240 .
WEI Z Y , YANG X , WANG N N , et al . Syncretic modality collaborative learning for visible infrared person re-identification [C ] // 2021 IEEE/CVF International Conference on Computer Vision . Piscataway : IEEE , 2022 : 225 - 234 .
WU J B , LIU H , SHI W , et al . Style-agnostic representation learning for visible-infrared person re-identification [J ] . IEEE Transactions on Multimedia , 2024 , 26 : 2263 - 2275 .
WANG H Z , ZHAO J Q , ZHOU Y , et al . AMC-Net: Attentive modality-consistent network for visible-infrared person re-identification [J ] . Neurocomputing , 2021 , 463 : 226 - 236 .
ZHANG L , GUO H Y , ZHU K , et al . Hybrid modality metric learning for visible-infrared person re-identification [J ] . ACM Transactions on Multimedia Computing, Communications, and Applications , 2022 , 18 ( 1 s): 1 - 15 .
FENG Y J , CHEN F , SUN G Z , et al . Learning multi-granularity representation with transformer for visible-infrared person re-identification [J ] . Pattern Recognition , 2025 , 164 : 111510 .
ZHANG Y K , LU Y , YAN Y , et al . Frequency domain nuances mining for visible-infrared person re-identification [EB/OL ] . ( 2024-01-10 )[ 2025-09-30 ] . https://arXiv.org/abs/2401.02162 https://arXiv.org/abs/2401.02162 .
PANG Z Q , WANG C Y , ZHAO L L , et al . Cross-modality hierarchical clustering and refinement for unsupervised visible-infrared person re-identification [J ] . IEEE Transactions on Circuits and Systems for Video Technology , 2024 , 34 ( 4 ): 2706 - 2718 .
CHENG D , HUANG X J , WANG N N , et al . Unsupervised visible-infrared person ReID by collaborative learning with neighbor-guided label refinement [C ] // Proceedings of the 31st ACM International Conference on Multimedia . New York : ACM , 2023 : 7085 - 7093 .
CHENG D , HE L F , WANG N N , et al . Efficient bilateral cross-modality cluster matching for unsupervised visible-infrared person ReID [C ] // Proceedings of the 31st ACM International Conference on Multimedia . New York : ACM , 2023 : 1325 - 1333 .
YANG B , CHEN J , YE M . Towards grand unified representation learning for unsupervised visible-infrared person re-identification [C ] // 2023 IEEE/CVF International Conference on Computer Vision . Piscataway : IEEE , 2024 : 11035 - 11045 .
HE L F , CHENG D , WANG N N , et al . Exploring homogeneous and heterogeneous consistent label associations for unsupervised visible-infrared person ReID [J ] . International Journal of Computer Vision , 2025 , 133 ( 6 ): 3129 - 3148 .
YANG B , CHEN J , YE M . Shallow-deep collaborative learning for unsupervised visible-infrared person re-identification [C ] // 2024 IEEE/CVF Conference on Computer Vision and Pattern Recognition . Piscataway : IEEE , 2024 : 16870 - 16879 .
XIA D X , LIU H J , XU L L , et al . Visible-infrared person re-identification with data augmentation via cycle-consistent adversarial network [J ] . Neurocomputing , 2021 , 443 : 35 - 46 .
CHEN Q S , QUAN Z Z , LI Y J , et al . An unsupervised domain adaption approach for cross-modality RGB-infrared person re-identification [J ] . IEEE Sensors Journal , 2023 , 23 ( 24 ): 31399 - 31413 .
XING Y T , XIAO G Q , LEW M S , et al . Lifelong visible-infrared person re-identification via a tri-token transformer with a query-key mechanism [C ] // Proceedings of the 2024 International Conference on Multimedia Retrieval . New York : ACM , 2024 : 988 - 997 .
LIN X Y , LI J X , MA Z Y , et al . Learning modal-invariant and temporal-memory for video-based visible-infrared person re-identification [C ] // 2022 IEEE/CVF Conference on Computer Vision and Pattern Recognition . Piscataway : IEEE , 2022 : 20941 - 20950 .
LI H F , LIU M H , HU Z X , et al . Intermediary-guided bidirectional spatial-temporal aggregation network for video-based visible-infrared person re-identification [J ] . IEEE Transactions on Circuits and Systems for Video Technology , 2023 , 33 ( 9 ): 4962 - 4972 .
HAFNER F M , BHUYIAN A , KOOIJ J F P , et al . Cross-modal distillation for RGB-depth person re-identification [J ] . Computer Vision and Image Understanding , 2022 , 216 : 103352 .
LIU Q , HE X H , TENG Q Z , et al . BDNet: A BERT-based dual-path network for text-to-image cross-modal person re-identification [J ] . Pattern Recognition , 2023 , 141 : 109636 .
ZHAI Y J , ZENG Y W , CAO D , et al . TriReID: Towards multi-modal person re-identification via descriptive fusion model [C ] // Proceedings of the 2022 International Conference on Multimedia Retrieval . New York : ACM , 2022 : 63 - 71 .
0
浏览量
12
下载量
0
CSCD
关联资源
相关文章
相关作者
相关机构
京公网安备11010802024621