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首页> 外文期刊>Emerging Topics in Computing, IEEE Transactions on >Temporal Factor-Aware Video Affective Analysis and Recommendation for Cyber-Based Social Media
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Temporal Factor-Aware Video Affective Analysis and Recommendation for Cyber-Based Social Media

机译:基于网络的社交媒体的时间因素感知视频情感分析和推荐

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摘要

As an important cyber-enabled application, online video recommendation is seeing significant interest from both industry and academia. To effectively recommend video content becomes a popular research topic. However, it has been found that existing recommendation methods based on video affective analysis ignore the temporal factor, leading to poor performance especially when the order of emotion components does affect the recommendation quality. This motivates us to study the feature of emotion fluctuation, which we call Temporal Factor of Emotion (TFE). In this paper, a novel recommendation method based on the Grey Relational Analysis (GRA) is proposed to tackle this problem. GRA preserves the temporal factor of objects during analysis and is suitable for analyzing systems with unknown correlation (a set of independent videos). In our work, first, specific video features are extracted and mapped to the well-known Lovheim emotion-space, through the SVMs (Support Vector Machine). Then, GRA is applied to compute the quantitative relation among videos by using extracted emotions as factors. Finally, a pick-filter pattern and GRA-based recommendation method under the Fisher model are proposed. To evaluate the performance of our method, an online video recommendation system is developed. Experimental results of both user study and parameter evaluation demonstrate that the GRA-based method can improve accuracy of video affective analysis and performance of video recommendation.
机译:作为一种重要的网络应用程序,在线视频推荐受到了业界和学术界的极大关注。有效推荐视频内容成为流行的研究主题。但是,已经发现,基于视频情感分析的现有推荐方法忽略了时间因素,导致性能较差,尤其是在情感成分的顺序确实影响推荐质量时。这促使我们研究情绪波动的特征,我们将其称为情绪的时间因素(TFE)。本文提出了一种基于灰色关联分析(GRA)的新型推荐方法。 GRA在分析过程中保留了对象的时间因素,适用于分析相关性未知的系统(一组独立的视频)。在我们的工作中,首先,通过SVM(支持向量机)提取特定的视频特征并将其映射到著名的Lovheim情感空间。然后,以提取的情感为因子,应用GRA来计算视频之间的定量关系。最后,提出了Fisher模型下的Pick-filter模式和基于GRA的推荐方法。为了评估我们方法的性能,开发了一个在线视频推荐系统。用户研究和参数评估的实验结果表明,基于GRA的方法可以提高视频情感分析的准确性和视频推荐性能。

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