不同分割标准对语音情感识别性能的影响

Bagus Tris Atmaja, A. Sasou
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引用次数: 3

摘要

传统的语音情感识别(SER)评价仅仅是在与说话人无关的条件下进行的;他们中的一些人甚至没有在这种情况下评估他们的结果。本文强调了通过脚本分割SER的训练和测试数据的重要性,称为句子开放或文本独立标准。结果表明,使用句子开放标准会降低SER的性能。这一发现暗示了在声学信息中嵌入的不同语言信息中识别语音情感的困难。令人惊讶的是,与文本无关的标准始终比说话者+文本无关的标准表现得更差。从最困难到最简单的判断标准的难易程度依次为:文本独立、说话人+文本独立、说话人独立和说话人+文本依赖。说话人+文本独立和文本独立的判断标准之间的差距小于其他判断标准,增加了从不同句子中的言语表情中识别情绪的难度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effect of different splitting criteria on the performance of speech emotion recognition
Traditional speech emotion recognition (SER) eval-uations have been performed merely on a speaker-independent condition; some of them even did not evaluate their result on this condition. This paper highlights the importance of splitting training and test data for SER by script, known as sentence-open or text-independent criteria. The results show that em-ploying sentence-open criteria degraded the performance of SER. This finding implies the difficulties of recognizing emotion from speech in different linguistic information embedded in acoustic information. Surprisingly, text-independent criteria consistently performed worse than speaker+text-independent criteria. The full order of difficulties for splitting criteria on SER performances from the most difficult to the easiest is text-independent, speaker+text-independent, speaker-independent, and speaker+text-dependent, The gap between speaker+text-independent and text-independent was smaller than other criteria, strengthening the difficulties of recognizing emotion from sneech in different sentences.
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