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Advancements and recent trends in emotion recognition using facial image analysis and machine learning models

机译:使用面部图像分析和机器学习模型进行情感识别的进展和最新趋势

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摘要

As the demand for systems with human computer interaction grows, automated systems with human gesture and emotion recognition capabilities are the need of the hour. Emotions are understood by textual, vocal, and verbal expression data. Facial imagery also provides a constructive option to interpret and analyse human emotional issues. This paper describes the recent advancements in methods and techniques used to gauge the five primary emotions or moods frequently captured on images containing the human face: surprise, happiness, disgust, normality, drowsiness, through automated machinery. Looking at the recent developments in facial expression recognition techniques, the focus is on artificial neural networks and Support Vector Machine (SVM) in emotion classification. The technique first analyses the information conveyed by the facial regions of the eye and mouth into a merged new image and using it as an input to a feed forward neural network trained by back propagation. The second method showcases the use of Oriented Fast and Rotated (ORB) on a single frame of imagery to extract texture information, and the classification is completed using SVM. The special case of drowsiness detection systems using facial imagery by pattern classification, as automated drowsiness detection promises to play a revolutionary role in preventing road fatalities due to lethargic symptoms in drivers is also discussed.
机译:随着对具有人机交互功能的系统的需求不断增长,具有人的手势和情感识别功能的自动化系统已成为一个小时的需求。情绪可以通过文字,声音和口头表达数据来理解。面部图像还提供了一个建设性的选项来解释和分析人类的情感问题。本文介绍了用于测量通过自动机械在包含人脸的图像上经常捕获的五种主要情绪或情绪的方法和技术的最新进展:惊奇,幸福,厌恶,正常,嗜睡。展望面部表情识别技术的最新发展,重点是人工神经网络和情感分类中的支持向量机(SVM)。该技术首先将由眼睛和嘴巴的面部区域传达的信息分析为合并的新图像,并将其用作通过反向传播训练的前馈神经网络的输入。第二种方法展示了在单幅图像上使用定向快速旋转(ORB)来提取纹理信息,并且使用SVM完成了分类。另外,还讨论了使用面部图像按模式分类的嗜睡检测系统的特殊情况,因为自动嗜睡检测有望在预防驾驶员因嗜睡症状导致的道路死亡方面发挥革命性作用。

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