移动环境下基于双峰特征的实时情感识别融合

S. Gievska, Kiril Koroveshovski, Natasha Tagasovska
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引用次数: 8

摘要

本研究探讨了语音中语言和声音线索的双峰融合的可行性,以帮助在移动应用程序中实时识别情感,从而引导与用户情感协调的交互对话。为了在语言层面捕捉情感,我们同时利用了机器学习和对带有情感内涵的单词的效价评估。本研究特别关注语音声线索的指示值,并提出了一个优化的特征集。我们强调了对潜在的语言和声学处理组件的独立评估的结果。我们提出了一项研究并随后讨论了逻辑模型树的性能指标,该指标优于融合过程中考虑的其他分类器。研究结果强化了这样一种观点,即捕捉不同特征之间的声音相互作用,对于面对言语中情感的微妙之处至关重要,而这些微妙之处往往是仅通过文本或声音来识别情感的方法所无法做到的。
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Bimodal feature-based fusion for real-time emotion recognition in a mobile context
This research explores the viability of a bimodal fusion of linguistic and acoustic cues in speech to help in realtime emotion recognition in a mobile application that steers the interaction dialogue in tune with user's emotions. For capturing affect at the language level, we have utilized both, machine learning and valence assessment of the words carrying emotional connotations. The indicative values of acoustic cues in speech are of special concern in this research and an optimized feature set is proposed. We highlight the results of both independent evaluations of the underlying linguistic and acoustic processing components. We present a study and ensuing discussion on the performance metrics of a Logistic Model Tree that has outperformed the other classifiers considered for the fusion process. The results reinforce the notion that capturing the sound interplay between the diverse set of features is crucial for confronting the subtleties of affect in speech that so often elude the text- or acoustic-only approaches to emotion recognition.
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