Using CNN and Open CV, Mood Identification with Face Feature Learning

Hem Lata Sharma, Meenakshi Sharma
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引用次数: 1

Abstract

Investigation on sentimental analysis via face image identification is ongoing in the domain of human-computer interaction (HCI). With their body language and facial expressions individuals are able to communicate a wide range of feelings and experiences. In this assignment, we will use a method that enables the machine to identify individual the facial identification of human feelings with the aid of Convolution Neural Network (CNN) and OpenCV in order to recognise the real feelings from the person's face gesture. Emotion Recognition is ultimately a synthesis of data gathered from many patterns. The barrier among humans and technology will be closed if computers are able to comprehend more human emotions. In this study article, we'll show how to read a person's frontal facial expression to accurately identify emotions including neutrality, pleased, unhappy, surprised, furious, frightened, and contempt.
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基于CNN和Open CV的情绪识别与人脸特征学习
在人机交互(HCI)领域,基于人脸图像识别的情感分析研究正在进行中。通过他们的肢体语言和面部表情,人们能够交流各种各样的感受和经历。在这个作业中,我们将使用一种方法,使机器能够识别个人的面部识别人类的感觉借助卷积神经网络(CNN)和OpenCV,以识别真实的感觉从人的面部手势。情感识别最终是从许多模式中收集的数据的综合。如果计算机能够理解更多的人类情感,人类和技术之间的障碍将被关闭。在这篇研究文章中,我们将展示如何阅读一个人的正面面部表情,以准确地识别情绪,包括中性、高兴、不高兴、惊讶、愤怒、害怕和蔑视。
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