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Ranking highlight level of movie clips : a template based adaptive kernel SVM method

机译:影片剪辑的高光等级排名:基于模板的自适应内核SVM方法

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摘要

This paper looks into a new direction in movie clips analysis – model based ranking of highlight level. A movie clip, containing a short story, is composed of several continuous shots, which is much simpler than the whole movie. As a result, clip based analysis provides a feasible way for movie analysis and interpretation. In this paper, clip-based ranking of highlight level is proposed, where the challenging problem in detecting and recognizing events within clips is not required. Due to the lack of publicly available datasets, we firstly construct a database of movie clips, where each clip is associated with manually derived highlight level as ground truth. From each clip a number of effective visual cues are then extracted. To bridge the gap between low-level features and highlight level semantics, a holistic method of highlight ranking model is introduced. According to the distance between testing clips and selected templates, appropriate kernel function of support vector machine (SVM) is adaptively selected. Promising results are reported in automatic ranking of movie highlight levels.
机译:本文探讨了影片剪辑分析的新方向-基于模型的高亮级别排名。包含短故事的电影剪辑由几张连续的镜头组成,比整个电影要简单得多。结果,基于剪辑的分析为电影分析和解释提供了一种可行的方法。在本文中,提出了基于片段的突出显示级别排名,其中不需要在片段中检测和识别事件的挑战性问题。由于缺乏公开可用的数据集,我们首先构建了一个影片剪辑数据库,其中每个剪辑都与手动导出的高光水平作为地面真实性相关联。然后从每个剪辑中提取许多有效的视觉提示。为了弥补低级特征和突出显示级别语义之间的差距,引入了一种整体的突出显示排序模型方法。根据测试片段和所选模板之间的距离,自适应选择支持向量机(SVM)的适当内核功能。在电影高亮级别的自动排名中报告了有希望的结果。

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