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Stabilized adaptive sampling control for reliable real-time learning-based surveillance systems

机译:基于可靠的实时学习监控系统的稳定自适应采样控制

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摘要

In modern security systems such as CCTV-based surveillance applications, real-time deep-learning based computer vision algorithms are actively utilized for always-on automated execution. The real-time computer vision system for surveillance applications is highly computation-intensive and exhausts computation resources when it performed on the device with a limited amount of resources. Based on the nature of Internet-of-Things networks, the device is connected to main computing platforms with offloading techniques. In addition, the real-time computer vision system such as the CCTV system with image recognition functionality performs better when arrival images are sampled at a higher rate because it minimizes missing video frame feeds. However, performing it at overwhelmingly high rates exposes the system to the risk of a queue overflow that hampers the reliability of the system. In order to deal with this issue, this paper proposes a novel queue-aware dynamic sampling rate adaptation algorithm that optimizes the sampling rates to maximize the computer vision performance (i.e., recognition ratio) while avoiding queue overflow under the concept of Lyapunov optimization framework. Through extensive system simulations, the proposed approaches are shown to provide remarkable gains.
机译:在现代安全系统中,如基于CCTV的监视应用,基于实时的基于深度学习的计算机视觉算法被积极地用于始终on自动执行。当其在具有有限资源的设备上执行时,用于监控应用的实时计算机视觉系统是高度计算密集型和排气的计算资源。基于物联网网络的性质,该设备连接到具有卸载技术的主计算平台。另外,当以更高的速率进行采样时,实时计算机视觉系统(例如具有图像识别功能的CCTV系统)的执行更好,因为它最小化缺失的视频帧馈送。然而,以压倒性高的速率执行它将系统暴露于队列溢出的风险,妨碍了系统的可靠性。为了处理这个问题,本文提出了一种新的队列感知动态采样率适应算法,可以优化采样率,以最大化计算机视觉性能(即,识别比率),同时避免Lyapunov优化框架的概念下的队列溢出。通过广泛的系统模拟,所提出的方法显示出提供了显着的收益。

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