On the Selection of Anchors and Targets for Video Hyperlinking

Zhi-Qi Cheng, H. Zhang, Xiao Wu, C. Ngo
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引用次数: 16

Abstract

A problem not well understood in video hyperlinking is what qualifies a fragment as an anchor or target. Ideally, anchors provide good starting points for navigation, and targets supplement anchors with additional details while not distracting users with irrelevant, false and redundant information. The problem is not trivial for intertwining relationship between data characteristics and user expectation. Imagine that in a large dataset, there are clusters of fragments spreading over the feature space. The nature of each cluster can be described by its size (implying popularity) and structure (implying complexity). A principle way of hyperlinking can be carried out by picking centers of clusters as anchors and from there reach out to targets within or outside of clusters with consideration of neighborhood complexity. The question is which fragments should be selected either as anchors or targets, in one way to reflect the rich content of a dataset, and meanwhile to minimize the risk of frustrating user experience. This paper provides some insights to this question from the perspective of hubness and local intrinsic dimensionality, which are two statistical properties in assessing the popularity and complexity of data space. Based these properties, two novel algorithms are proposed for low-risk automatic selection of anchors and targets.
论视频超链接中锚点和目标的选择
在视频超链接中没有很好理解的一个问题是,是什么使片段有资格作为锚点或目标。理想情况下,锚点为导航提供了良好的起点,目标用额外的细节补充锚点,同时不会用不相关、虚假和冗余的信息分散用户的注意力。数据特征与用户期望之间的关系错综复杂,问题并不简单。想象一下,在一个大型数据集中,有一簇碎片分布在特征空间中。每个集群的性质可以通过其大小(表示受欢迎程度)和结构(表示复杂性)来描述。超链接的一种基本方法是选取聚类的中心作为锚点,在考虑邻域复杂性的情况下,从那里到达聚类内外的目标。问题是应该选择哪些片段作为锚点或目标,以一种方式反映数据集的丰富内容,同时最小化令人沮丧的用户体验的风险。本文从中心度和局部固有维数这两个衡量数据空间的流行度和复杂性的统计性质的角度对这一问题提出了一些见解。基于这些特性,提出了两种新的低风险自动选择锚点和目标的算法。
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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