一种改进的人脸情绪识别方法,可自动生成带有表情的人脸表情

B. Mallikarjuna, M. S. Ram, Supriya Addanke
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引用次数: 0

摘要

任何人脸图像表情都会自然地识别出快乐、悲伤等表情。;人脸图像表情识别有时是复杂的,它是两种情绪的结合。现有文献提供了人脸情绪分类和图像识别,使用卷积神经网络(CNN)进行深度学习的研究提供了对医疗保健最有用的人脸情绪识别,并且使用了现有算法中最复杂的算法。本文改进了人脸情感识别,并为他人在智能手机上生成表情符号提供了感兴趣的感觉。人脸情绪识别通过使用卷积神经网络在深度学习和医疗服务人工智能领域发挥着重要作用。面部情绪自动识别包括两种方法,如Ada-boost分类器算法的人脸检测和情绪分类,情绪分类包括使用CNN等深度学习方法提取特征来识别七种情绪以生成表情符号。
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An Improved Face-Emotion Recognition to Automatically Generate Human Expression With Emoticons
Any human face image expression naturally identifies expressions of happy, sad etc.; sometimes human facial image expression recognition is complex, and it is a combination of two emotions. The existing literature provides face emotion classification and image recognition, and the study on deep learning using convolutional neural networks (CNN), provides face emotion recognition most useful for healthcare and with the most complex of the existing algorithms. This paper improves the human face emotion recognition and provides feelings of interest for others to generate emoticons on their smartphone. Face emotion recognition plays a major role by using convolutional neural networks in the area of deep learning and artificial intelligence for healthcare services. Automatic facial emotion recognition consists of two methods, such as face detection with Ada boost classifier algorithm and emotional classification, which consists of feature extraction by using deep learning methods such as CNN to identify the seven emotions to generate emoticons.
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