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Facial expression recognition using expression-specific local binary patterns and layer denoising mechanism

机译:使用特定于表情的局部二进制模式和图层去噪机制进行面部表情识别

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In this paper, a novel framework for facial expression recognition is proposed, which improves the conventional feature extraction technique to further exploit distinctive characters for each label. To reduce the effect from unrelated features for facial expression recognition, a denoising mechanism is introduced. After denoising, to keep the connection between expression labels and whiten features as well as reduce the amount of computation, a manifold learning algorithm is applied, which finding a meaningful low-dimensional structure hidden in the whiten feature space. Finally, the features in the low-dimensional space are fed into the well know classifier such as the support vector machine and k-Nearest Neighbors. Simulations show that the proposed framework achieves the best recognition performance against existing methods in facial expression recognition.
机译:在本文中,提出了一种新颖的面部表情识别框架,该框架改进了传统的特征提取技术,以进一步利用每个标签的独特字符。为了减少不相关特征对面部表情识别的影响,引入了一种去噪机制。去噪后,为了保持表达标签和增白特征之间的联系以及减少计算量,应用了流形学习算法,该算法找到了一种隐藏在增白特征空间中的有意义的低维结构。最后,将低维空间中的特征输入到众所周知的分类器中,例如支持向量机和k最近邻。仿真表明,与现有的面部表情识别方法相比,该框架具有最佳的识别性能。

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