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Large-scale Affective Content Analysis: Combining Media Content Features and Facial Reactions

机译:大规模情感内容分析:结合媒体内容特征和面部反应

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We present a novel multimodal fusion model for affective content analysis, combining visual, audio and deep visual-sentiment descriptors from the media content with automated facial action measurements from naturalistic responses to the media. We collected a dataset of 48,867 facial responses to 384 media clips and extracted a rich feature set from the facial responses and media content. The stimulus videos were validated to be informative, inspiring, persuasive, sentimental or amusing. By combining the features, we were able to obtain a classification accuracy of 63% (weighted F1-score: 0.62) for a five-class task. This was a significant improvement over using the media content features alone. By analyzing the feature sets independently, we found that states of informed and persuaded were difficult to differentiate from facial responses alone due to the presence of similar sets of action units in each state (AU 2 occurring frequently in both cases). Facial actions were beneficial in differentiating between amused and informed states whereas media content features alone performed less well due to similarities in the visual and audio make up of the content. We highlight examples of content and reactions from each class. This is the first affective content analysis based on reactions of 10,000s of people.
机译:我们提出了一种新颖的多模态融合模型,用于情感内容分析,将媒体内容中的视觉,音频和深层视觉情感描述符与对媒体自然反应的自动面部动作测量相结合。我们收集了针对384个媒体剪辑的48,867个面部反应的数据集,并从面部反应和媒体内容中提取了丰富的功能集。刺激视频经验证可提供有益的,启发性的,说服力的,感性的或有趣的信息。通过组合这些功能,我们可以为五类任务获得63%的分类精度(加权F1分数:0.62)。与仅使用媒体内容功能相比,这是一个重大改进。通过独立地分析功能集,我们发现,由于每个状态中都存在相似的动作单元集(AU 2在两种情况下都频繁发生),因此知情和被说服的状态很难单独与面部反应区分开。面部动作有助于区分娱乐状态和知情状态,而由于内容的视觉和音频相似性,仅媒体内容功能的效果较差。我们重点介绍每个课程的内容和反应示例。这是第一个基于10,000人反应的情感内容分析。

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