Fusion Mappings for Multimodal Affect Recognition

2015 IEEE Symposium Series on Computational Intelligence(2015)

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摘要
Affect recognition is an inherently multi-modal task that makes it appealing to investigate classifier combination approaches in real world scenarios. Thus a variety of different independent classifiers can be constructed from basically independent features without having to rely on artificial feature views. In this paper we study a large variety of fusion approaches based on a multitude of features that were extracted from audio, video and physiological signals. For this purpose the RECOLA data collection is used and we show how an ensemble of classifiers can outperform the best individual classifier.
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关键词
fusion mapping,multimodal affect recognition,multimodal task,classifier combination approach,artificial feature view,fusion approach,feature extraction,audio signals,video signals,physiological signals,RECOLA data collection,classifier ensemble
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