This paper focuses on features in speech and classificationalgorithms for using them in emotion recognition software. We illustrate a new approach concentrated on analyzing speech quality features. The quality featur...
详细信息
ISBN:
(纸本)0780393619
This paper focuses on features in speech and classificationalgorithms for using them in emotion recognition software. We illustrate a new approach concentrated on analyzing speech quality features. The quality features are formants, spectral energy distribution in different frequency bands, harmonics-to-noise ratio (in different frequency bands) and irregularities (jitter, shimmer). Some papers 131, 141 show that there is a relationship between quality features and the valence axis. This paper deals with dimensional approach to classify emotions. Therefore, mainly quality features will be taken for the valence axis to classify emotions and mainly prosody features will be taken for the arousal axis. Because our experiments show that single emotion recognition rates are up to 90 percent and the recognition rates for speaker independent recognition is about 70% for all classification algorithm, it seems that quality features are more appropriate to differentiate emotions with the same arousal and different valence levels in a dimensional approach. A prototypical emotion recognition software is implemented which is actually, tested for analyzing the mood of customers in call centers.
暂无评论