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Maximizing resource utilization in video streaming systems.

机译:最大化视频流系统中的资源利用率。

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摘要

Video streaming has recently grown dramatically in popularity over the Internet, Cable TV, and wire-less networks. Because of the resource demanding nature of video streaming applications, maximizing resource utilization in any video streaming system is a key factor to increase the scalability and decrease the cost of the system. Resources to utilize include server bandwidth, network bandwidth, battery life in battery operated devices, and processing time in limited processing power devices. In this work, we propose new techniques to maximize the utilization of video-on-demand (VOD) server resources. In addition to that, we propose new framework to maximize the utilization of the network bandwidth in wireless video streaming systems.;Providing video streaming users in a VOD system with expected waiting times enhances their perceived quality-of-service (QoS) and encourages them to wait thereby increasing server utilization by increasing server throughput. In this work, we analyze waiting-time predictability in scalable video streaming. We also propose two prediction schemes and study their effectiveness when applied with various stream merging techniques and scheduling policies. The results demonstrate that the waiting time can be predicted accurately, especially when enhanced cost-based scheduling is applied. The combination of waiting-time prediction and cost-based scheduling leads to outstanding performance benefits. The achieved resource sharing by stream merging depends greatly on how the waiting requests are scheduled for service. Motivated by the development of cost-based scheduling, we investigate its effectiveness in great detail and discuss opportunities for further tunings and enhancements. Additionally, we analyze the effectiveness of incorporating video prediction results into the scheduling decisions. We also study the interaction between scheduling policies and the stream merging techniques and explore new ways for enhancements.;The interest in video surveillance systems has grown dramatically during the last decade. Auto-mated video surveillance (AVS) serves as an efficient approach for the realtime detection of threats and for monitoring their progress. Wireless networks in AVS systems have limited available bandwidth that have to be estimated accurately and distributed efficiently. In this research, we develop two cross-layer optimization frameworks that maximize the bandwidth optimization of 802.11 wireless network. We develop a distortion-based cross-layer optimization framework that manages bandwidth in the wire-less network in such a way that minimizes the overall distortion. We also develop an accuracy-based cross-layer optimization framework in which the overall detection accuracy of the computer vision algorithm(s) running in the system is maximized. Both proposed frameworks manage the application rates and transmission opportunities of various video sources based on the dynamic network conditions to achieve their goals. Each framework utilizes a novel online approach for estimating the effective airtime of the network. Moreover, we propose a bandwidth pruning mechanism that can be used with the accuracy-based framework to achieve any desired tradeoff between detection accuracy and power consumption. We demonstrate the effectiveness of the proposed frameworks, including the effective air-time estimation algorithms and the bandwidth pruning mechanism, through extensive experiments using OPNET.
机译:最近,视频流在Internet,有线电视和无线网络上的普及急剧增长。由于视频流应用程序的资源需求性质,在任何视频流系统中最大化资源利用率是增加可伸缩性和降低系统成本的关键因素。可利用的资源包括服务器带宽,网络带宽,电池供电设备中的电池寿命以及有限处理能力设备中的处理时间。在这项工作中,我们提出了一些新技术,以最大限度地利用视频点播(VOD)服务器资源。除此之外,我们提出了一个新的框架来最大程度地利用无线视频流系统中的网络带宽。在预期的等待时间为VOD系统中的视频流用户提供服务可以增强他们的感知服务质量(QoS)并鼓励他们等待,从而通过提高服务器吞吐量来提高服务器利用率。在这项工作中,我们分析了可伸缩视频流中的等待时间可预测性。我们还提出了两种预测方案,并结合各种流合并技术和调度策略研究了它们的有效性。结果表明,可以准确地预测等待时间,尤其是在应用基于成本的增强型计划时。等待时间预测和基于成本的计划的结合带来了出色的性能优势。通过流合并实现的资源共享在很大程度上取决于如何安排等待请求以进行服务。受基于成本的计划制定的推动,我们非常详细地研究了其有效性,并讨论了进一步调整和增强的机会。此外,我们分析了将视频预测结果纳入调度决策的有效性。我们还研究了调度策略与流合并技术之间的相互作用,并探索了增强的新方法。在过去的十年中,对视频监视系统的兴趣急剧增长。自动视频监视(AVS)是一种实时检测威胁并监视其进度的有效方法。 AVS系统中的无线网络具有有限的可用带宽,必须准确估算和有效分配带宽。在这项研究中,我们开发了两个跨层优化框架,它们可以最大化802.11无线网络的带宽优化。我们开发了一种基于失真的跨层优化框架,该框架以最小化整体失真的方式管理无线网络中的带宽。我们还开发了一个基于精度的跨层优化框架,其中使系统中运行的计算机视觉算法的整体检测精度达到最大。两种提议的框架都基于动态网络条件来管理各种视频源的应用率和传输机会,以实现其目标。每个框架都使用一种新颖的在线方法来估计网络的有效通话时间。此外,我们提出了一种带宽修剪机制,可以将其与基于精度的框架一起使用,以实现检测精度与功耗之间的任何期望的折衷。通过使用OPNET进行的广泛实验,我们证明了所提出框架的有效性,包括有效的广播时间估计算法和带宽修剪机制。

著录项

  • 作者单位

    Wayne State University.;

  • 授予单位 Wayne State University.;
  • 学科 Engineering Computer.;Information Technology.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 145 p.
  • 总页数 145
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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