讲座视频片段关键词的自动识别

Raga Shalini Koka, Farah Naz Chowdhury, Mohammad Rajiur Rahman, T. Solorio, J. Subhlok
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引用次数: 7

摘要

讲座视频是一种越来越重要的学习资源。然而,在一个很长的讲座视频中快速找到感兴趣的内容是这种格式的一个关键限制。本文介绍了讲座视频片段的关键词(或标签)自动发现,以改善导航。讲座视频根据内容的帧与帧之间的相似性划分为主题片段。用户通过视觉摘要和视频片段的关键字导航讲座视频。关键词提供了该部分讨论内容的概述,以改进导航。关键字识别算法的输入是由OCR提取的视频帧中的文本。自动发现关键字是具有挑战性的,因为N-gram是否适合作为关键字取决于各种因素,包括片段中的频率和相对于完整视频的频率、字体大小、屏幕上的时间以及在领域和语言字典中的存在。本文探讨了如何对这些因素进行量化和组合,以确定好的关键词。本文的主要科学贡献是设计、实现和评估讲座视频片段的关键字选择算法。通过将算法生成的关键词与专家在11个STEM课程视频的121个片段中选择的标签进行比较来进行评估。
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Automatic Identification of Keywords in Lecture Video Segments
Lecture video is an increasingly important learning resource. However, the challenge of quickly finding the content of interest in a long lecture video is a critical limitation of this format. This paper introduces automatic discovery of keywords (or tags) for lecture video segments to improve navigation. A lecture video is divided into topical segments based on the frame-to-frame similarity of content. A user navigates the lecture video assisted by visual summaries and keywords for the segments. Keywords provide an overview of the content discussed in the segment to improve navigation. The input to the keyword identification algorithm is the text from the video frames extracted by OCR. Automatically discovering keywords is challenging as the suitability of an N-gram to be a keyword depends on a variety of factors including frequency in a segment and relative frequency in reference to the full video, font size, time on screen, and the existence in domain and language dictionaries. This paper explores how these factors are quantified and combined to identify good keywords. The key scientific contribution of this paper is the design, implementation, and evaluation of a keyword selection algorithm for lecture video segments. Evaluation is performed by comparing the keywords generated by the algorithm with the tags chosen by experts on 121 segments of 11 videos from STEM courses.
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