系统仿真学报 ›› 2026, Vol. 38 ›› Issue (2): 294-306.doi: 10.16182/j.issn1004731x.joss.25-0590

• 学习与集成框架 • 上一篇    

面向边缘实时视频分析的资源高效持续学习框架

吴舒霞1,2,3, 张俊杰1,2,3, 陈德珑1,2,3, 陈哲毅1,2,3   

  1. 1.福州大学 计算机与大数据学院,福建 福州 350116
    2.大数据智能教育部工程研究中心,福建 福州 350002
    3.福建省网络计算与智能信息处理重点实验室(福州大学),福建 福州 350116
  • 收稿日期:2025-06-24 修回日期:2025-09-11 出版日期:2026-02-18 发布日期:2026-02-11
  • 通讯作者: 陈哲毅
  • 第一作者简介:吴舒霞(2001-),女,硕士生,研究方向为边缘计算、实时视频分析、资源优化。
  • 基金资助:
    国家自然科学基金(62202103);福建省杰出青年科学基金(2025J010020);中央引导地方科技发展资金(2022L3004);福建省科技经济融合服务平台(2023XRH001);福厦泉国家自主创新示范区协同创新平台(2022FX5)

Resource-efficient Continuous Learning Framework for Edge Real-time Video Analytics

Wu Shuxia1,2,3, Zhang Junjie1,2,3, Chen Delong1,2,3, Chen Zheyi1,2,3   

  1. 1.College of Computer and Data Science, Fuzhou University, Fuzhou 350116, China
    2.Engineering Research Center of Big Data Intelligence, Ministry of Education, Fuzhou 350002, China
    3.Fujian Key Laboratory of Network Computing and Intelligent Information Processing (Fuzhou University), Fuzhou 350116, China
  • Received:2025-06-24 Revised:2025-09-11 Online:2026-02-18 Published:2026-02-11
  • Contact: Chen Zheyi

摘要:

通过在网络边缘部署轻量化模型,边缘系统可提供实时视频分析服务。由于模型训练与实际部署之间的差异会导致数据漂移,为构造与真实环境相匹配的轻量化模型提出了一种面向边缘实时视频分析的资源高效持续学习框架(continuous learning framework for edge real-time video analytics,CL4VA)。引入了一种面向感兴趣区域粒度的精度下降预测器以高效选取实时视频流中的关键样本;构建了一种双层混合样本池以自适应触发模型持续学习并避免灾难性遗忘问题;设计了一种基于DRL的控制器以决定完成模型重训练的合适时机。仿真结果表明:CL4VA相较于基准方法可降低平均8.65%的延迟和提升最高5.57%的精度。同时,CL4VA的核心组件仅需极低的在线开销。

关键词: 边缘计算, 实时视频分析, 资源优化, 持续学习, 深度强化学习

Abstract:

By deploying lightweight models at the network edge, edge systems can provide services of real-time video analytics. However, due to the data drift caused by the discrepancy between model training and actual deployment, it is challenging to construct lightweight models that match real-world environments. To address this challenge, a resource-efficient continuous learning framework for edge real-time video analytics (CL4VA) was proposed. A region of interest-granularity predictor for accuracy degradation was introduced to efficiently select key samples from real-time video streams.A two-layer mixed sample pool was constructed to adaptively trigger the model's continuous learning and avoid the issue of catastrophic forgetting.A DRL-based controller was designed to determine the appropriate time to complete model re-training. The simulation results show that compared to the baseline method, CL4VA can reduce the average latency by 8.65% and increase the accuracy by up to 5.57%. Moreover, the core components of CL4VA require extremely low online overhead.

Key words: edge computing, real-time video analytics, resource optimization, continuous learning, DRL

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