A Review On Face Emotion Recognition Techniques
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Abstract
Emotion recognition is categorizes as one of the challenging and important task in image processing fields. The image processing junctures comprises of three steps: pre-processing, feature extraction and classification. Image Processing is a rapidly developing area with growing applications in Science and Engineering field. Image Processing holds the possibility of developing the eventual machine that could perform the visual functions of all living beings. Facial emotions are contemplate to be the important source of information which is a common requirement for human to express their emotions.
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