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首页> 外文期刊>International Journal of Artificial Intelligence Tools: Architectures, Languages, Algorithms >Robust Facial Expression Recognition with Low-Rank Sparse Error Dictionary Based Probabilistic Collaborative Representation Classification
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Robust Facial Expression Recognition with Low-Rank Sparse Error Dictionary Based Probabilistic Collaborative Representation Classification

机译:基于低级稀疏错误字典的概率协作表示分类,强大的面部表情识别

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摘要

The performance of facial expression recognition (FER) would be degraded due to some factors such as individual differences, Gaussian random noise and so on. Prior feature extraction methods like Local Binary Patterns (LBP) and Gabor filters require explicit expression components, which are always unavailable and difficult to obtain. To make the facial expression recognition (FER) more robust, we propose a novel FER approach based on low-rank sparse error dictionary (LRSE) to remit the side-effect caused by the problems above. Then the query samples can be represented and classified by a probabilistic collaborative representation based classifier (ProCRC), which exploits the maximum likelihood that the query sample belonging to the collaborative subspace of all classes can be better computed. The final classification is performed by seeking which class has the maximum probability. The proposed approach which exploits ProCRC associated with the LRSE features (LRSE ProCRC) for robust FER reaches higher average accuracies on the different databases (i.e., 79.39% on KDEF database, 89.54% on CAS-PEAL database, 84.45% on CK+ database etc.). In addition, our method also leads to state-of-the-art classification results from the aspect of feature extraction methods, training samples, Gaussian noise variances and classification based methods on benchmark databases.
机译:面部表情识别(FER)的性能将因诸如单独差异,高斯随机噪声等的一些因素而降低。现有特征提取方法,如局部二进制图案(LBP)和Gabor滤波器需要显式表达式组件,其总是不可用且难以获得的。为了使面部表情识别(FER)更加强大,我们提出了一种基于低级稀疏错误字典(LRSE)的新型FER方法,以汇率由上述问题引起的副作用。然后,可以通过基于概率的基于分类器(PROCRC)来表示和分类查询样本,其利用所属的查询样本的最大可能性可以更好地计算所有类的协作子空间。通过寻求哪个类具有最大概率来执行最终分类。拟议的方法,利用鲁棒FERS的LRSE特征(LRSE PROCRC)相关的方法达到了不同数据库的平均精度(即KDEF数据库的79.39%,CAS-PEAL数据库89.54%,CK +数据库上的84.45%。 )。此外,我们的方法还领导了来自特征提取方法,训练样本,高斯噪声差异和基于基于基准数据库的分类方法的最先进的分类结果。

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