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首页> 外文期刊>Journal of ambient intelligence and humanized computing >A multi-scale and rotation-invariant phase pattern (MRIPP) and a stack of restricted Boltzmann machine (RBM) with preprocessing for facial expression classification
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A multi-scale and rotation-invariant phase pattern (MRIPP) and a stack of restricted Boltzmann machine (RBM) with preprocessing for facial expression classification

机译:具有预处理面部表情分类的多尺度和旋转不变相位图案(MRIPP)和一堆限制的Boltzmann机(RBM)

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摘要

In facial expression recognition applications, the classification accuracy decreases because of the blur, illumination and localization problems in images. Therefore, a robust emotion recognition technique is needed. In this work, a Multi-scale and Rotation-Invariant Phase Pattern (MRIPP) is proposed. The MRIPP extracts the features from facial images, and the extracted patterns are blur-insensitive, rotation-invariant and robust. The performance of classification algorithms like Fisher faces, Support Vector Machine (SVM), Extreme Learning Machine (ELM), Convolutional Neural Network (CNN) and Deep Neural Network (DNN) are analyzed. In order to reduce the time for classification, an OPTICS-based pre-processing of the features is proposed that creates a non-redundant and compressed training set to classify the test set. Ten-fold cross validation is used in experimental analysis and the performance metric classification accuracy is used. The proposed approach has been evaluated with six datasets Japanese Female Facial Expression (JAFFE), Cohn Kanade (CK +), Multi- media Understanding Group (MUG), Static Facial Expressions in the Wild (SFEW), Oulu-Chinese Academy of Science, Institute of Automation (Oulu-CASIA) and Man-Machine Interaction (MMI) datasets to meet a classification accuracy of 98.2%, 97.5%, 95.6%, 35.5%, 87.7% and 82.4% for seven class emotion detection using a stack of Restricted Boltzmann Machines(RBM), which is high when compared to other latest methods.
机译:在面部表情识别应用中,由于图像中的模糊,照明和定位问题,分类精度降低。因此,需要一种强大的情感识别技术。在这项工作中,提出了一种多尺度和旋转不变相位模式(MRIPP)。 MRIPP从面部图像中提取特征,提取的图案是模糊不敏感的,旋转不变和鲁棒的。分析了渔业面,支持向量机(SVM),极端学习机(ELM),卷积神经网络(CNN)和深神经网络(DNN)等分类算法的性能。为了减少分类的时间,提出了一种基于光学的预处理,其创建了非冗余和压缩训练集以对测试集进行分类。在实验分析中使用十倍交叉验证,使用性能度量分类精度。拟议的方法已被评估为六个日本女性面部表情(jaffe),Cohn Kanade(CK +),多媒体了解组(Mug),野生(SFew),奥鲁 - 中国科学院的静态面部表情,自动化研究所(Oulu-Casia)和人机互动(MMI)数据集,以达到七级情绪检测的98.2%,97.5%,95.6%,35.5%,87.7%和82.4%的分类准确性。与其他最新方法相比,Boltzmann Machines(RBM)很高。

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