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Emotion recognition from speech: Putting ASR in the loop

Björn W. Schuller, Anton Batliner, Stefan Steidl, Dino Seppi

发表年份
2009
引用次数
52

摘要

This paper investigates the automatic recognition of emotion from spoken words by vector space modeling vs. string kernels which have not been investigated in this respect, yet. Apart from the spoken content directly, we integrate part-of-speech and higher semantic tagging in our analyses. As opposed to most works in the field, we evaluate the performance with an ASR engine in the loop. Extensive experiments are run on the FAU Aibo Emotion Corpus of 4 k spontaneous emotional child-robot interactions and show surprisingly low performance degradation with real ASR over transcription-based emotion recognition. In the result, bag of words dominate over all other modeling forms based on the spoken content.

关键词

Speech recognitionComputer scienceString (physics)Natural language processingTranscription (linguistics)Loop (graph theory)Field (mathematics)Artificial intelligenceEmotion recognitionLinguistics

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