首页 /研究 /Emotion classification in children's speech using fusion of acoustic and linguistic features
LEARNING

Emotion classification in children's speech using fusion of acoustic and linguistic features

Tim Polzehl, Shiva Sundaram, Hamed Ketabdar, Michael Wagner, Florian Metze

发表年份
2009
引用次数
39

摘要

This paper describes a system to detect angry vs. non-angry utterances of children who are engaged in dialog with an Aibo robot dog. The system was submitted to the Interspeech2009 Emotion Challenge evaluation. The speech data consist of short utterances of the children’s speech, and the proposed system is designed to detect anger in each given chunk. Frame-based cepstral features, prosodic and acoustic features as well as glottal excitation features are extracted automatically, reduced in dimensionality and classified by means of an artificial neural network and a support vector machine. An automatic speech recognizer transcribes the words in an utterance and yields a separate classification based on the degree of emotional salience of the words. Late fusion is applied to make a final decision on anger vs. non-anger of the utterance. Preliminary results show 75.9% unweighted average recall on the training data and 67.6 % on the test set. Index Terms: speech processing, meta-data extraction, emotion recognition, evaluation

关键词

Speech recognitionComputer scienceUtteranceSalience (neuroscience)Artificial intelligenceNatural language processingEmotion classificationMel-frequency cepstrumAngerFeature extraction

相关论文

查看 LEARNING 分类全部论文