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Building Naturalistic Emotionally Balanced Speech Corpus by Retrieving Emotional Speech from Existing Podcast Recordings

机译:通过从现有的播客录音中检索情感语音来建立自然主义的情感平衡语音语料库

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摘要

The lack of a large, natural emotional database is one of the key barriers to translate results on speech emotion recognition in controlled conditions into real-life applications. Collecting emotional databases is expensive and time demanding, which limits the size of existing corpora. Current approaches used to collect spontaneous databases tend to provide unbalanced emotional content, which is dictated by the given recording protocol (e.g., positive for colloquial conversations, negative for discussion or debates). The size and speaker diversity are also limited. This paper proposes a novel approach to effectively build a large, naturalistic emotional database with balanced emotional content, reduced cost and reduced manual labor. It relies on existing spontaneous recordings obtained from audio-sharing websites. The proposed approach combines machine learning algorithms to retrieve recordings conveying balanced emotional content with a cost effective annotation process using crowdsourcing, which make it possible to build a large scale speech emotional database. This approach provides natural emotional renditions from multiple speakers, with different channel conditions and conveying balanced emotional content that are difficult to obtain with alternative data collection protocols.
机译:缺乏大型自然情感数据库是将受控条件下的语音情感识别结果转换为现实应用的主要障碍之一。收集情感数据库是昂贵且费时的,这限制了现有语料库的大小。当前用于收集自发数据库的方法趋向于提供不平衡的情感内容,这由给定的记录协议决定(例如,口语对话为积极,讨论或辩论为负面)。大小和说话者多样性也受到限制。本文提出了一种新颖的方法来有效地建立一个具有均衡的情感内容,降低成本和减少体力劳动的大型自然主义情感数据库。它依赖于从音频共享网站获得的现有自发录音。所提出的方法结合了机器学习算法,使用众包以具有成本效益的注释过程检索了传达平衡的情感内容的录音,从而有可能建立大规模的语音情感数据库。这种方法提供了来自多个说话者的自然情感再现,具有不同的频道条件,并且传达了平衡的情感内容,而使用其他数据收集协议很难获得这些情感内容。

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