The effect of different video summarization models on the quality of video recommendation based on low-level visual features

Yashar Deldjoo, P. Cremonesi, M. Schedl, Massimo Quadrana
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引用次数: 14

Abstract

Video summarization is a powerful tool for video understanding and browsing and is considered as an enabler for many video analysis tasks. While the effect of video summarization models has been largely studied in video retrieval and indexing applications over the last decade, its impact has not been well investigated in content-based video recommendation systems (RSs) based on low-level visual features, where the goal is to recommend items/videos to users based on visual content of videos. This work reveals specific problems related to video summarization and their impact on video recommendation. We present preliminary results of an analysis involving applying different video summarization models for the problem of video recommendation on a real-world RS dataset (MovieLens-10M) and show how temporal feature aggregation and video segmentation granularity can significantly influence/improve the quality of recommendation.
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基于底层视觉特征的不同视频摘要模型对视频推荐质量的影响
视频摘要是视频理解和浏览的强大工具,被认为是许多视频分析任务的推动者。在过去的十年中,视频摘要模型在视频检索和索引应用中的作用已经得到了大量的研究,但其在基于低级视觉特征的基于内容的视频推荐系统(RSs)中的影响还没有得到很好的研究,RSs的目标是根据视频的视觉内容向用户推荐项目/视频。这项工作揭示了与视频摘要相关的具体问题及其对视频推荐的影响。我们提出了一项分析的初步结果,该分析涉及在现实世界的RS数据集(MovieLens-10M)上应用不同的视频摘要模型来解决视频推荐问题,并展示了时间特征聚合和视频分割粒度如何显著影响/提高推荐质量。
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