对于网络视频质量度量标准的探索毕业论文外文翻译.doc
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1、A Quest for an Internet Video Quality-of-Experience MetricAthula Balachandran Vyas SekarAditya AkellaSrinivasan Seshan Ion StoicaHui ZhangCarnegie Mellon UniversityUniversity of Wisconsin MadisonStony Brook UniversityUniversity of California BerkeleyABSTRACTAn imminent challenge that content provide
2、rs, CDNs, thirdparty analytics and optimization services, and video player designers in the Internet video ecosystem face is the lack of a single “gold standard” to evaluate different competing solutions. Existing techniques that describe the quality of the encoded signal or controlled studies to me
3、asure opinion scores do not translate directly into user experience at scale. Recent work shows that measurable performance metrics such as buffering, startup time, bitrate, and number of bitrate switches impact user experience. However, converting these observations into a quantitative quality-of-e
4、xperience metric turns out to be challenging since these metrics are interrelated in complex and sometimes counter-intuitive ways,and their relationship to user experience can be unpredictable.To further complicate things, many confounding factors are introduced by the nature of the content itself (
5、e.g., user interest, genre). We believe that the issue of interdependency can be addressed by casting this as a machine learning problem to build a suitable predictive model from empirical observations. We also show that setting up the problem based on domain-specific and measurement-driven insights
6、 can minimize the impact of the various confounding factors to improve the prediction performance.Categories and Subject DescriptorsC.4 Performance of Systems: measurement techniques,performance attributesGeneral TermsHuman Factors, Measurement, Performance1. INTRODUCTIONWith the decreasing cost of
7、content delivery and the growing success of subscription and ad-based business models(e.g., 2), video traffic over the Internet is predicted to increase in the years to come, possibly even surpassing television based viewership in the future 3. An imminent challenge that all players in the Internet
8、video ecosystemcontent providers, content delivery networks, analytics services, video player designers, and usersface is the lack of a standardized approach to measure the Quality-of-Experience (QoE) that different solutions provide. With the “coming of age” of this technology and the establishment
9、 of industry standard groups (e.g., 13), such a measure will become a fundamental requirement to promote further innovation by allowing us to objectively compare different competing designs 11,17.The notion of QoE appears to many forms of media and has a rich history in the multimedia community (e.g
10、., 9, 10,14, 15). However, Internet video introduces new effects interms of measuring both quality and experience:Measuring quality: Internet video is delivered using HTTP-based commodity technology over a largely unreliable network via existing CDN infrastructures. Consequently, the traditional enc
11、oding-related measures of quality like Peak Signal-to-Noise Ratio are replaced by a suite of quality metrics that capture several effects introduced by the delivery mechanismbuffering, bitrate delivered, frame rendering rate, bitrate switching, and startup delay 6, 33.Measuring experience: In the co
12、ntext of advertismentand subscription-supported services, the perceptual opinion of a user in a controlled study does not necessarily translate into objective measures of engagement that impact providers business objectives. Typical measures of engagement used today to approximate these business obj
13、ectives are in-the-wild measurements of user behavior; e.g., fraction of a particular video played and number of visits to the provider 6, 33.To obtain a robust QoE measure, we ideally need a unified and quantitative understanding of how low-level quality metrics impact measures of experience. By un
14、ified, we want to see how the set of quality metrics taken together impact quality, as opposed to each metric in isolation. This is especially relevant since there are natural tradeoffs between the metrics; e.g., lower bitrate can ensure lower buffering but reduces the user experience. Similarly, by
15、 quantitative, we want to go beyond a simple correlational understanding of “metric M impacts engagement”, to a stronger statement of the form “changing metric M from x to x changes engagement from y to y”.Unfortunately, the state of the art in our understanding of video QoE is limited to a simple q
16、ualitative understanding of how individual metrics impact engagement 19. This leads to severe shortcomings for every component of the video ecosystem. For example, adaptive video players today resort to ad hoc tradeoffs between bitrate, startup delay, and buffering 16,20,32. Similarly, frameworks fo
17、r multi-CDN optimization use primitive QoE metrics that only capture buffering effects without accounting for the impact of bitrate or bitrate switching 28, 29. Finally, content providers do not have systematic ways to evaluate the cost-performance tradeoffs that different CDNs or multi-CDN optimiza
18、tions offer 1.We observe that there are three key factors that make it challenging to obtain a unified and quantitative understanding of Internet video QoE:Complex relationships: The relationships between the quality metrics and the effective user experience can be quite complex and even counter-int
19、uitive. For example, while one would naturally expect a higher video bitrate leading to better user experience, we observe a non-monotonic relationship between the two.Metric dependencies: The metrics themselves have subtle interdependencies and have implicit tradeoffs. For example, although switchi
20、ng bitrates to adapt to the bandwidth conditions can reduce buffering, we observe that high rates of switching can annoy users.Impact of content: There are many confounding factors introduced by the nature of the content itself. For example, different genres of content such as live and videoon-deman
21、d (VOD) show very different viewing patterns. Similarly, users interest in content also affects their tolerance non-trivially.Our goal in this paper is to identify a feasible roadmap toward developing a robust, unified and quantitative QoE metric that can address these challenges. We have two intuit
22、ive reasons to be hopeful. The challenges raised by complex relationships and subtle interdependencies can be addressed by casting QoE inference as a machine learning problem of building an appropriate model that can predict the user engagement (e.g., play time) as a function of the various quality
23、metrics. The second issue of content-induced effects can be addressed using domain-specific and measurementdriven insights to carefully set up the learning tasks.Our preliminary results give us reason to be optimistic.For example, a decision tree based classifier can provide close to 50% accuracy in
24、 predicting the engagement. Carefully setting up the inputs and features for the learning process could lead to as high as 25% gain in accuracy of the prediction model.Figure 1: Overview of the Internet video ecosystem; a robust QoE metric is critical for every component in this ecosystem.The rest o
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