Lecture improvement using students emotion assessment provided as SaS for teachers

The paper deals with the Cloud Based solution and experience using Microsoft Azure Emotion Assessment Software as a Service embedded for application for teachers. The project was also about testing an assessment on the selected database and accuracy this process was calculated. The paper report about the problems related to camera lighting and resolution of the audience. The testing Azure platform was very good in accessibility and upload of images for almost real-time processing. The further development of this research is leading to provide teachers an effective tool for feedback their audience attention during lecture which should be in correlation of teaching effectivity.

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