通过多传感器融合和深度强化学习增强基于物联网的智能视频监控

Aymen Hussein, S. Ahmed, Shorook K. Abed, Noor Thamer
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引用次数: 0

摘要

目前,在物联网(IoT)中成功的无线通信必须是持久和自我维持的。机器学习(ML)技术的集成,包括深度学习(DL),使物联网网络变得高效和自给自足。深度学习模型,如增强型深度学习(EDRL),已经被开发用于智能视频监控(IVS)应用。结合多种模型,优化融合评分,可以改善融合系统的设计和决策过程。这些用于信息融合的智能系统具有广泛的潜在应用,包括机器人和云环境。模糊方法和优化算法可用于改进多媒体应用和电子系统中的数据融合。该相机传感器正在开发用于移动边缘计算(MEC)的算法,该算法使用动作价值技术通过协作决策优化来指导系统操作。结合物联网和深度学习技术来提高应用程序的整体性能是一项艰巨的任务。根据研究观察,采用这种策略,设计人员可以将安全性、性能和准确性提高97.24%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing IoT-Based Intelligent Video Surveillance through Multi-Sensor Fusion and Deep Reinforcement Learning
Currenlty, wireless communication that is successful in the Internet of Things (IoT) must be long-lasting and self-sustaining. The integration of machine learning (ML) techniques, including deep learning (DL), has enabled IoT networks to become highly effective and self-sufficient. DL models, such as enhanced DRL (EDRL), have been developed for intelligent video surveillance (IVS) applications. Combining multiple models and optimizing fusion scores can improve fusion system design and decision-making processes. These intelligent systems for information fusion have a wide range of potential applications, including in robotics and cloud environments. Fuzzy approaches and optimization algorithms can be used to improve data fusion in multimedia applications and e-systems. The camera sensor is developing algorithms for mobile edge computing (MEC) that use action-value techniques to instruct system actions through collaborative decision-making optimization. Combining IoT and deep learning technologies to improve the overall performance of apps is a difficult task. With this strategy, designers can increase security, performance, and accuracy by more than 97.24 %, as per research observations.
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