Learning video browsing behavior and its application in the generation of video previews

T. Syeda-Mahmood, D. Ponceleón
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引用次数: 97

Abstract

With more and more streaming media servers becoming commonplace, streaming video has now become a popular medium of instruction, advertisement, and entertainment. With such prevalence comes a new challenge to the servers: Can they track browsing behavior of users to determine what interest users? Learning this information is potentially valuable not only for improved customer tracking and context-sensitive e-commerce, but also in the generation of fast previews of videos for easy pre-downloads. In this paper, we present a formal learning mechanism to track video browsing behavior of users. This information is then used to generate fast video previews. Specifically, we model the states a user transitions while browsing through videos to be the hidden states of a Hidden Markov Model. We estimate the parameters of the HMM using maximum likelihood estimation for each sample observation sequence of user interaction with videos. Video previews are then formed from interesting segments of the video automatically inferred from an analysis of the browsing states of viewers. Audio coherence in the previews is maintained by selecting clips spanning complete clauses containing topically significant spoken phrases. The utility of learning video browsing behavior is demonstrated through user studies and experiments.
学习视频浏览行为及其在视频预览生成中的应用
随着越来越多的流媒体服务器的普及,流媒体视频已经成为一种流行的教学、广告和娱乐媒体。这种流行给服务器带来了新的挑战:它们能否跟踪用户的浏览行为来确定用户感兴趣的是什么?了解这些信息不仅对改进客户跟踪和上下文敏感的电子商务有潜在的价值,而且对生成快速预览视频以方便预下载也有潜在的价值。在本文中,我们提出了一种正式的学习机制来跟踪用户的视频浏览行为。这些信息随后用于生成快速视频预览。具体来说,我们将用户在浏览视频时转换的状态建模为隐马尔可夫模型的隐藏状态。我们对用户与视频交互的每个样本观测序列使用最大似然估计来估计HMM的参数。视频预览是由视频中有趣的片段自动形成的,这些视频片段是通过对观看者浏览状态的分析自动推断出来的。预习中的音频连贯性是通过选择包含有主题意义的口语短语的完整子句片段来保持的。通过用户研究和实验证明了学习视频浏览行为的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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