基于HOG和LBP的视频面部情绪识别

J. Kulandai Josephine Julina, T. Sharmila
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引用次数: 7

摘要

情绪是通过分析声音和面部表情,通过语言和非语言线索发现的。监测人类的情绪模式在预测一个人的情绪方面变得越来越重要。面部情绪识别是利用面部表情检测和识别人类不同类型情绪的过程。这些步骤包括人脸及其标志的检测、面部标志的特征提取和情绪状态的分类。哈尔级联方法用于检测图像中的不同面部成分,如眼睛,嘴巴和鼻子。采用梯度直方图(HOG)和局部二值模式(LBP)对面部特征进行分析。由特征点形成最终的特征向量。利用神经网络分类器对快乐、悲伤和愤怒三种情绪状态进行分类。将测试数据的新特征点与训练数据进行比较,并将其对应的标签值显示为情感识别的输出,使用HOG和LBP技术分别实现了87%和64%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Facial Emotion Recognition in Videos using HOG and LBP
Emotions are found using verbal and non-verbal cues by analyzing voices and facial expressions. Monitoring emotional patterns of human is gaining importance in predicting the mood of a person. Facial emotion recognition is the process of detecting and recognizing different types of emotions in humans using facial expressions. The various steps include detection of the face and its landmarks, feature extraction of facial landmarks, and emotional state classification. The Haar cascading approach is used to detect different facial components such as eyes, mouth, and nose in an image. Facial features are analyzed using Histogram of Gradients (HOG) and Local Binary Pattern (LBP). The resultant feature vector is formed from the feature points. The three emotional states namely happy, sad and angry are classified using neural network classifier. The new feature points of test data are compared against trained data and their corresponding label values are displayed as the output for emotion recognition with the accuracy of 87% and 64% is being achieved using HOG and LBP techniques.
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