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Recognizing Expression Variant and Occluded Face Images Based on Nested HMM and Fuzzy Rule Based Approach

机译:基于嵌套HMM和模糊规则的人脸表情变异和遮挡图像识别

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The face recognition with expression and occlusion variation becomes the greatest challenge in biometric applications to recognize people. The proposed work concentrates on recognizing occlusion and seven kinds of expression variations such as neutral, surprise, happy, sad, fear, disgust and angry. During enrollment process, principle component analysis (PCA) detects facial regions on the input image. The detected facial region is converted into fuzzy domain data to make decision during recognition process. The Haar wavelet transform extracts features from the detected facial regions. The Nested Hidden markov model is employed to train these features and each feature of face image is considered as states in a Markov chain to perform learning among the features. The maximum likelihood for the input image was estimated by using Baum Welch algorithm and these features were kept on database. During recognition process, the expression and occlusion varied face image is taken as the test image and maximum likelihood for test image is found by following same procedure done in enrollment process. The matching score between maximum likelihood of input image and test image is computed and it is utilized by fuzzy rule based method to decide whether the test image belongs to authorized or unauthorized. The proposed work was tested among several expression varied and occluded face images of JAFFE and AR datasets respectively.
机译:具有表情和遮挡变化的人脸识别成为生物识别应用中识别人的最大挑战。拟议的工作集中在识别遮挡和七种表情变化,例如中立,惊讶,快乐,悲伤,恐惧,厌恶和生气。在注册过程中,主成分分析(PCA)会检测输入图像上的面部区域。将检测到的面部区域转换为模糊域数据,以便在识别过程中做出决策。 Haar小波变换从检测到的面部区域中提取特征。嵌套隐马尔可夫模型用于训练这些特征,面部图像的每个特征都被视为马尔可夫链中的状态,以在这些特征之间进行学习。使用Baum Welch算法估算输入图像的最大似然,并将这些特征保存在数据库中。在识别过程中,将表情和遮挡变化的面部图像作为测试图像,并按照注册过程中执行的相同步骤找到测试图像的最大可能性。计算输入图像与测试图像的最大似然度之间的匹配分数,并利用基于模糊规则的方法来确定测试图像属于授权图像还是未授权图像。分别在JAFFE和AR数据集的几种表情变化和遮挡的人脸图像中测试了提出的工作。

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