DynAMoS:用于主观性分析的动态情感电影片段数据库。

Jeffrey M Girard, Yanmei Tie, Einat Liebenthal
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摘要

在本文中,我们介绍了一个新视频数据库的设计、收集和验证过程,该数据库包括 83 名参与者在观看 22 个情感电影片段时的整体和动态情感评分。与情感计算领域以往的工作(例如,通过平均 2 到 7 名训练有素的参与者的评分)不同,我们对情感体验固有的主观性进行了包容,并提供了所有参与者评分的完整分布(每段视频平均有 76.7 名评分者)。我们认为,这种选择代表了一种范式的转变,有可能为情感计算领域开辟新的研究方向、提出新的假设并激发新的方法。我们还介绍了该数据库的几个跨学科用例:为情感激发研究(如心理学、医学和神经科学)提供动态规范,训练和测试情感内容分析算法(如动态情感识别、视频摘要和电影推荐),以及研究情感反应中的主观性(如识别电影中情感模糊或矛盾的时刻,识别主观性的预测因素,以及开发个性化的情感内容分析算法)。该数据库通过 https://dynamos.mgb.org 免费提供给研究人员作非商业性使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DynAMoS: The Dynamic Affective Movie Clip Database for Subjectivity Analysis.

In this paper, we describe the design, collection, and validation of a new video database that includes holistic and dynamic emotion ratings from 83 participants watching 22 affective movie clips. In contrast to previous work in Affective Computing, which pursued a single "ground truth" label for the affective content of each moment of each video (e.g., by averaging the ratings of 2 to 7 trained participants), we embrace the subjectivity inherent to emotional experiences and provide the full distribution of all participants' ratings (with an average of 76.7 raters per video). We argue that this choice represents a paradigm shift with the potential to unlock new research directions, generate new hypotheses, and inspire novel methods in the Affective Computing community. We also describe several interdisciplinary use cases for the database: to provide dynamic norms for emotion elicitation studies (e.g., in psychology, medicine, and neuroscience), to train and test affective content analysis algorithms (e.g., for dynamic emotion recognition, video summarization, and movie recommendation), and to study subjectivity in emotional reactions (e.g., to identify moments of emotional ambiguity or ambivalence within movies, identify predictors of subjectivity, and develop personalized affective content analysis algorithms). The database is made freely available to researchers for noncommercial use at https://dynamos.mgb.org.

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