首页> 外文会议>Advances in Image and Video Technology; Lecture Notes in Computer Science; 4319 >Facial Expressions Recognition in a Single Static as well as Dynamic Facial Images Using Tracking and Probabilistic Neural Networks
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Facial Expressions Recognition in a Single Static as well as Dynamic Facial Images Using Tracking and Probabilistic Neural Networks

机译:使用跟踪和概率神经网络在单个静态和动态面部图像中识别面部表情

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摘要

An efficient, global and local image-processing based extraction and tracking of intransient facial features and automatic recognition of facial expressions from both static and dynamic 2D image/video sequences is presented. Expression classification is based on Facial Action Coding System (FACS) a lower and upper face action units (Aus), and discrimination is performed using Probabilistic Neural Networks (PNN) and a Rule-Based system. For the upper face detection and tracking, we use systems based on a novel two-step active contour tracking system while for the upper face, cross-correlation based tracking system is used to detect and track of Facial Feature Points (FFPs). Extracted FFPs are used to extract some geometric features to form a feature vector which is used to classify input image or image sequences into Aus and basic emotions. Experimental results show robust detection and tracking and reasonable classification where an average recognition rate is 96.11% for six basic emotions in facial image sequences and 94% for five basic emotions in static face images.
机译:提出了一种基于全局,局部和局部图像处理的高效方法,可从静态和动态2D图像/视频序列中提取和跟踪不连续的面部特征并自动识别面部表情。表情分类基于面部动作编码系统(FACS)的上下面部动作单位(Aus),并使用概率神经网络(PNN)和基于规则的系统进行区分。对于上脸检测和跟踪,我们使用基于新颖的两步主动轮廓跟踪系统的系统,而对于上脸,基于互相关的跟踪系统用于检测和跟踪面部特征点(FFP)。提取的FFP用于提取一些几何特征以形成特征向量,该特征向量用于将输入图像或图像序列分类为Aus和基本情绪。实验结果表明,在面部图像序列中六个基本情感的平均识别率为96.11%,在静态面部图像中五个基本情感的平均识别率为94%。

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