声学情感识别:性能的基准比较

Björn Schuller, Bogdan Vlasenko, F. Eyben, G. Rigoll, A. Wendemuth
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引用次数: 268

摘要

鉴于语音情感识别的第一个挑战,我们使用两种占主导地位的范式,在相同条件下对该领域的九个标准语料库进行了迄今为止最大的基准比较:基于隐马尔可夫模型的帧级建模和基于系统特征暴力强迫的超分段建模。调查的语料库有ABC、AVIC、DES、EMO-DB、eNTERFACE、SAL、SmartKom、SUSAS和VAM数据库。为了更好地提供集合之间的可比性,我们还将每个数据库的情绪聚类为二值价和唤醒辨别任务。结果发现,主要源于自然情绪和自发言语的语料库与更典型的事件的语料库之间存在巨大差异。此外,当一次处理几个类时,超分段建模被证明是非常有益的。
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Acoustic emotion recognition: A benchmark comparison of performances
In the light of the first challenge on emotion recognition from speech we provide the largest-to-date benchmark comparison under equal conditions on nine standard corpora in the field using the two pre-dominant paradigms: modeling on a frame-level by means of hidden Markov models and supra-segmental modeling by systematic feature brute-forcing. Investigated corpora are the ABC, AVIC, DES, EMO-DB, eNTERFACE, SAL, SmartKom, SUSAS, and VAM databases. To provide better comparability among sets, we additionally cluster each database's emotions into binary valence and arousal discrimination tasks. In the result large differences are found among corpora that mostly stem from naturalistic emotions and spontaneous speech vs. more prototypical events. Further, supra-segmental modeling proves significantly beneficial on average when several classes are addressed at a time.
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