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Nonlinear Manifold Feature Extraction Based on Spectral Supervised Canonical Correlation Analysis for Facial Expression Recognition with RRNN

机译:基于谱监督典型相关分析的非线性流形特征提取与RRNN的面部表情识别

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A feature extraction method for Facial Expression Recognition Systems is proposed based on Spectral Supervised Canonical Correlation Analysis. For proper classification of expression it has been trained with Rethinking recurrent neural network. The Cohn Kanade Extensive and JAFFE databases are used in this paper. The images have been preprocessed using image normalization and then contrast limited adaptive histogram equalization to remove the illumination variance and noises. After down-sampling, the dimensions with factor data is provided to Spectral Supervised Canonical Correlation Analysis (SSCCA) which constructs affinity matrix that incorporates both the local structure and class information of the data points provided. Spectral feature is used for extracting features with more discriminative details, and revealing the nonlinear manifold structure of the data. SSCCA can effectively utilize the local structural information to discover low frequency coefficients more precisely. The method yields to more accurate and effective extraction compared to other methods. Data is provided to Rethinking recurrent neural network for training purpose. Meanwhile, the proposed method is more robust and effective compared to other methods in this field.
机译:提出了一种基于谱监督典型相关分析的面部表情识别系统特征提取方法。为了对表达进行正确分类,已使用Rethinking递归神经网络对其进行了训练。本文使用了Cohn Kanade广泛数据库和JAFFE数据库。图像已使用图像归一化进行了预处理,然后进行了对比度受限的自适应直方图均衡化,以消除照明差异和噪声。下采样后,将带有因子数据的维提供给“光谱监督规范相关分析”(SSCCA),该模型构造结合了所提供数据点的局部结构和类信息的亲和力矩阵。光谱特征用于提取具有更多区分性细节的特征,并揭示数据的非线性流形结构。 SSCCA可以有效地利用本地结构信息来更精确地发现低频系数。与其他方法相比,该方法可进行更准确和有效的提取。数据被提供给Rethinking递归神经网络以进行训练。同时,与该领域的其他方法相比,所提出的方法更加健壮和有效。

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