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Published byViviana Hynson Modified over 10 years ago
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Audio-based Emotion Recognition for Advanced Information Retrieval in Judicial Domain ICT4JUSTICE 2008 – Thessaloniki,October 24 G. Arosio, E. Fersini, E. Messina, F. Archetti Dipartimento di Informatica, Sistemistica e Comunicazione Università degli Studi di Milano-Bicocca
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Affective Computing Learning the emotional state of a human being Learning from: Vocal signals Facial expressions Biometric signals Multimodal sources Applications Games (personal robots) Call centers Automotive JUMAS: Emotion Recognition in Judicial Domain for Semantic Retrieval Emotion Recognition
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JUMAS Project Audio&Video Document Current Scenario Manual Transcription Manual Retrieval Manual Information Extraction Automatic Recording Manual Retrieval Manual Information Extraction Automatic Recording Audio Stream Analogical / Digital Acquisition Video Stream Future Scenario Audio&Video Document Digital Acquisition Automatic Audio Transcription Automatic Audio&Video Annotation Automatic Information Extraction Automatic Semantic Retrieval Audio&Video Stream Emotion Annotation for
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Neutral Fear Emotion Recognition Output: XML Searchable Tags Neutral
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Challenges: What features are able to describe and discriminate different emotional states? Which kind of environment influences emotional state recognition? Which kind of learning models produces the optimal performance? Emotion Recognition
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Italian DB: 391 samples Sentences from movies 5 emotional states: Anger Happiness Sadness Neutral Fear Step 1 – Vocal Signature Acquisition Emotion Recognition from vocal signatures German DB: 531 samples Acted sentences: emotion on request 7 emotional states Anger Fear Happiness Sadness Neutral Disgust Boredom
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Preliminary Experimental Results Flat Models Learning Models are biased by: Language Gender Neutral emotional state
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Multi-Layer Support Vector Machines Hierarchical Classification: Multi-Layer Support Vector Machines
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Experimental Results Consclusion Multi-layer SVMs outperform traditional learning techniques Fututre Work Dynamic Techniques Integration with Semantic Information Retrieval System Cooperation with Deception Recognition Flat vs Multi-Layer Multi-Layer Flat German DB Italian DB
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