Abstract

Abstract: Emotion detection, which is an effortless task for humans, is complex to perform on machines. The interaction between human beings and computers are very natural if computers can be able to perceive and respond to human nonverbal communication such as emotions. This project targets to develop a multi-modal emotion detection web app that utilizes advanced computer vision, speech, and natural language processing (NLP) techniques to accurately identify and track human emotions in images, and video streams. Automatic emotions recognition is based on face expressions is a engaging discipline, which has several areas such as safety, health and in human interaction interfaces. Utilizing neural networks in conjunction with feature e traction techniques enables the recognition of various facial emotions such s happiness, sadness, anger, fear, surprise, and neutrality through analysis of facial expressions.. So it is very important to detect these emotions on the face. Human beings are can capable to produce thousands of face reactions during communication that can be vary in Depth, Strength, and Significance. We are using Convolutional Neural Network(CNN), to extract features from image to detect emotions and RNN and classify facial emotions. CNN is very effective for emotions recognition task. They can extract features from input image, and a real time video and then use these features to train a classifier. Facial expression analysis software like Face Reader is ideal for collecting this emotion data.

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