计算机科学 ›› 2026, Vol. 53 ›› Issue (3): 287-294.doi: 10.11896/jsjkx.260100073

• 计算机图形学 & 多媒体 • 上一篇    下一篇

基于少量目标数据和深度学习的行人重识别方法

付昱凯1, 李庆珍2, 董志学3, 师冬丽4, 赵鹏4   

  1. 1 英国圣安德鲁斯大学计算机科学学院 圣安德鲁斯 KY169AJ
    2 中国政法大学数据法治研究院 北京 102249
    3 中央财经大学统计与数学学院 北京 100081
    4 太原师范学院计算机科学与技术学院 山西 晋中 030619
  • 收稿日期:2025-10-13 修回日期:2026-01-22 发布日期:2026-03-12
  • 通讯作者: 赵鹏(zhaopeng@tynu.edu.cn)
  • 作者简介:(jack-fu0815@outlook.com)
  • 基金资助:
    山西省科技战略研究专项重点项目(202304031401011)

Pedestrian Re-identification Methods Based on Limited Target Data and Deep Learning

FU Yukai1, LI Qingzhen2, DONG Zhixue3, SHI Dongli4, ZHAO Peng4   

  1. 1 School of Computer Science, University of St.Andrews, United Kingdom, St.Andrews KY169AJ, United Kingdom
    2 Institute of Data Rule of Law, China University of Political Science and Law, Beijing 102249, China
    3 School of Statistics and Mathematics, Central University of Finance and Economics, Beijing 100081, China
    4 College of Computer Science and Technology, Taiyuan Normal University, Jinzhong, Shanxi 030619, China
  • Received:2025-10-13 Revised:2026-01-22 Online:2026-03-12
  • About author:FU Yukai,born in 2001,postgraduate,is a member of CCF(No.A35354M).His main research interests include machine learning and visual analysis.
    ZHAO Peng,born in 1973,Ph.D,professor,is a member of CCF(No.18032S).His main research interest is blockchain.
  • Supported by:
    Key Project of Shanxi Provincial Special Fund for Science and Technology Strategic Research(202304031401011).

摘要: 行人重识别(ReID)在跨摄像头检索场景中具有重要的应用价值,但深度模型在真实部署时常面临显著的域偏移问题,即在源域数据集上训练良好的模型迁移到新的目标摄像头网络后性能大幅下降。现有无监督域自适应方法通常依赖大量目标域未标注数据进行离线聚类,但在临时部署、隐私受限或目标数据难以提前收集的情况下,该前提往往难以满足。针对此问题,提出一种基于少量目标数据的深度行人重识别适配框架,以源域预训练模型为起点,冻结主干参数,仅引入轻量参数高效适配模块进行目标域校准;同时采用基于原型的稳定小样本决策,将少量目标标注样本聚合为类中心,以减少小样本噪声;并结合原型分类损失和排序约束共同优化,兼顾目标域适应能力与特征稳定性。在 Market-1501 与 DukeMTMC-reID 的跨数据集迁移实验中,所提方法在两个迁移方向均取得显著的性能提升。在 Market→Duke 上mAP和Rank-1分别达到 79.68%和 93.10%,在 Duke→Market 上mAP和Rank-1分别达到 76.07% 和 93.79%,并在逐轮增量适配中表现出持续的性能提升趋势。该方法能够在不依赖大规模目标数据的前提下实现有效且可迭代的跨域适配。

关键词: 行人重识别, 深度学习, 无监督域, 少量目标数据, 小样本决策

Abstract: Person re-identification(ReID) has significant application value in cross-camera retrieval scenarios,but deep models often face a significant domain shift problem in real-world deployments.This means that a model trained well on the source domain dataset experiences a sharp performance drop when transferred to a new target camera network.Existing unsupervised domain adaptation methods typically rely on large amounts of unlabeled target domain data for offline clustering and self-training.However,this prerequisite is often difficult to meet in situations involving temporary deployments,privacy constraints,or difficulty in collecting target data in advance.To address this issue,this paper proposes a deep person re-identification adaptation framework based on a small amount of target data.Starting with a pre-trained model in the source domain,it freezes the backbone parameters and introduces only a lightweight,efficient adaptation module for target domain calibration.Simultaneously,it employs a prototype-based stable few-sample decision-making approach,aggregating a small number of labeled target samples into class centers to reduce few-sample noise.Furthermore,it combines prototype classification loss,ranking constraints,and distillation regularization for optimization,balancing target domain adaptability and feature stability.In cross-dataset migration experiments on Market-1501 and DukeMTMC-reID,the proposed method achieves significant improvements in both migration directions:79.68% mAP and 93.10% Rank-1 on Market→Duke,and 76.07% mAP and 93.79% Rank-1 on Duke→Market,with a continuous improvement trend in incremental adaptation rounds.This method can achieve effective and iterative cross-domain adaptation without relying on large-scale target data.

Key words: Person re-identification, Deep learning, Unsupervised domain, Limited target data, Few-sample decision-making

中图分类号: 

  • TP391
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