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Automatic role recognition in multiparty recordings using social networks and probabilistic sequential models

机译:利用社交网络和概率顺序模型自动发挥多派录音中的角色识别

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摘要

The automatic analysis of social interactions is attracting significant interest in the multimedia community. This work addresses one of the most important aspects of the problem, namely the recognition of roles in social exchanges. The proposed approach is based on Social Network Analysis, for the representation of individuals in terms of their interactions with others, and probabilistic sequential models, for the recognition of role sequences underlying the sequence of speakers in conversations. The experiments are performed over different kinds of data (around 90 hours of broadcast data and meetings), and show that the performance depends on how formal the roles are, i.e. on how much they constrain people behavior.
机译:社会互动的自动分析吸引了对多媒体社区的重大兴趣。这项工作解决了问题的最重要方面,即对社会交易所的角色的认识。该方法基于社会网络分析,在与他人的互动和概率顺序模型的互动方面,为个人的代表性,用于识别谈话序列中的讲话序列的角色序列。实验是在不同类型的数据(大约90小时的广播数据和会议)上进行的,并表明性能取决于角色的形式,即它们限制人行为的程度。

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