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Hierarchical affective content analysis in arousal and valence dimensions

机译:唤醒和价维层次情感内容分析

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摘要

Different from the existing work focusing on emotion type detection, the proposed approach in this paper provides flexibility for users to pick up their favorite affective content by choosing either emotion intensity levels or emotion types. Specifically, we propose a hierarchical structure for movie emotions and analyze emotion intensity and emotion type by using arousal and valence related features hierarchically. Firstly, three emotion intensity levels are detected by using fuzzy c-mean clustering on arousal features. Fuzzy clustering provides a mathematical model to represent vagueness, which is close to human perception. Then, valence related features are used to detect five emotion types. Considering video is continuous time series data and the occurrence of a certain emotion is affected by recent emotional history, conditional random fields (CRFs) are used to capture the context information. Outperforming Hidden Markov Model, CRF relaxes the independence assumption for states required by HMM and avoids bias problem. Experimental results show that CRF-based hierarchical method outperforms the one-step method on emotion type detection. User study shows that majority of the viewers prefer to have option of accessing movie content by emotion intensity levels. Majority of the users are satisfied with the proposed emotion detection.
机译:与现有的专注于情感类型检测的工作不同,本文提出的方法为用户提供了灵活性,使其可以通过选择情感强度级别或情感类型来选择自己喜欢的情感内容。具体而言,我们提出了一种针对电影情感的层次结构,并通过使用与唤醒和化合价相关的特征来层次分析情感强度和情感类型。首先,通过对唤醒特征进行模糊c均值聚类来检测三个情绪强度级别。模糊聚类提供了代表模糊性的数学模型,它接近于人类的感知。然后,使用价相关特征来检测五种情绪类型。考虑到视频是连续的时间序列数据,并且某种情感的发生受到最近的情感历史的影响,因此使用条件随机字段(CRF)来捕获上下文信息。 CRF优于隐藏隐马尔可夫模型,它放宽了HMM要求的状态的独立性假设,并避免了偏差问题。实验结果表明,基于CRF的分层方法在情感类型检测方面优于一步法。用户研究表明,大多数观众更喜欢按情感强度级别访问电影内容。大多数用户对建议的情绪检测感到满意。

著录项

  • 来源
    《Signal processing》 |2013年第8期|2140-2150|共11页
  • 作者单位

    School of Computing and Communications, University of Technology Sydney, Australia,National Lab of Pattern Recognition, Institute of Automation, Chinese Academy of Sciences, China;

    National Lab of Pattern Recognition, Institute of Automation, Chinese Academy of Sciences, China;

    School of Computing and Communications, University of Technology Sydney, Australia;

    Faculty of Science and I.T., University of Newcastle, Australia;

    Faculty of Science and I.T., University of Newcastle, Australia;

    Microsoft Research, China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Affective content detection; Multiple modalities; Mid-level representation;

    机译:情感内容检测;多种方式;中层代表;

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