METHODS FOR RECOGNIZING A PERSON'S EMOTIONAL STATE IN VIDEO ANALYTICS SYSTEMS
Keywords:
Support Vector Machine, Active Appearance Models, Active models of appearance, Convolutional neural networksAbstract
The paper deals with the methods of analysis human’s emotional state are examined on the basis of analysis of video-images. Experimental results are compared and analyzed. These results are got at the use of different methods, as Support Vector Machine, Active Appearance Models and Convolutional neural networks
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