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A new facial expression recognition based on curvelet transform and online sequential extreme learning machine initialized with spherical clustering

机译:基于Curvelet变换和在线序列极限学习机的球形聚类初始化的新表情识别。

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摘要

In this paper, a novel algorithm is proposed for facial expression recognition by integrating curvelet transform and online sequential extreme learning machine (OSELM) with radial basis function (RBF) hidden node having optimal network architecture. In the proposed algorithm, the curvelet transform is firstly applied to each region of the face image divided into local regions instead of whole face image to reduce the curvelet coefficients too huge to classify. Feature set is then generated by calculating the entropy, the standard deviation and the mean of curvelet coefficients of each region. Finally, spherical clustering (SC) method is employed to the feature set to automatically determine the optimal hidden node number and RBF hidden node parameters of OSELM by aim of increasing classification accuracy and reducing the required time to select the hidden node number. So, the learning machine is called as OSELM-SC. It is constructed two groups of experiments: The aim of the first one is to evaluate the classification performance of OSELM-SC on the benchmark datasets, i.e., image segment, satellite image and DNA. The second one is to test the performance of the proposed facial expression recognition algorithm on the Japanese Female Facial Expression database and the Cohn-Kanade database. The obtained experimental results are compared against the state-of-the-art methods. The results demonstrate that the proposed algorithm can produce effective facial expression features and exhibit good recognition accuracy and robustness.
机译:本文提出了一种新的面部表情识别算法,该算法将Curvelet变换和在线顺序极限学习机(OSELM)与具有最佳网络架构的径向基函数(RBF)隐藏节点集成在一起。在提出的算法中,首先将Curvelet变换应用于划分为局部区域的人脸图像的每个区域,而不是整个人脸图像,以减小Curvelet系数太大而无法分类。然后通过计算每个区域的熵,标准偏差和曲波系数的平均值来生成特征集。最后,针对特征集采用球面聚类(SC)方法,以提高分类精度,减少选择隐藏节点数所需的时间,自动确定OSELM的最优隐藏节点数和RBF隐藏节点参数。因此,该学习机称为OSELM-SC。它分为两组实验:第一个实验的目的是评估OSELM-SC在基准数据集(即图像片段,卫星图像和DNA)上的分类性能。第二个是在日本女性面部表情数据库和Cohn-Kanade数据库上测试所提出的面部表情识别算法的性能。将获得的实验结果与最新方法进行比较。结果表明,该算法能够产生有效的面部表情特征,并具有良好的识别精度和鲁棒性。

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