视频摘要的全参考质量评估

Tongwei Ren, Yan Liu, Gangshan Wu
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引用次数: 11

摘要

随着视频摘要技术在高效的多媒体数据管理中得到越来越多的关注,需要对视频摘要进行质量评估。为了解决缺乏自动评估技术的问题,本文提出了一个新的框架,包括几个新的算法来评估给定参考的视频摘要的质量。首先,我们将参考视频摘要和候选视频摘要划分为摘要单元(SU)序列;然后,我们利用基于对齐的算法将候选摘要中的SUs与相应参考摘要中的SUs进行匹配。第三,我们提出了一种新的基于相似度的4c评价算法,分别从覆盖性、简洁性、连贯性和上下文角度对候选视频摘要进行评价。最后,采用基于学习的权重自适应方法,根据用户需求对个体评价结果进行整合。本文提出的框架和技术在TRECVID 2007标准数据集上进行了实验,并在视频摘要自动评估中取得了良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Full-Reference Quality Assessment for Video Summary
As video summarization techniques have attracted more and more attention for efficient multimedia data management, quality assessment of video summary is required. To address the lack of automatic evaluation techniques, this paper proposes a novel framework including several new algorithms to assess the quality of the video summary against a given reference. First, we partition the reference video summary and the candidate video summary into the sequences of summary unit (SU). Then, we utilize alignment based algorithm to match the SUs in the candidate summary with the SUs in the corresponding reference summary. Third, we propose a novel similarity based 4 C - assessment algorithm to evaluate the candidate video summary from the perspective of coverage, conciseness, coherence, and context, respectively. Finally, the individual assessment results are integrated according to userpsilas requirement by a learning based weight adaptation method. The proposed framework and techniques are experimented on a standard dataset of TRECVID 2007 and show the good performance in automatic video summary assessment.
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