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Deep Facial Expression Recognition of facial variations using fusion of feature extraction with classification in end to end model

机译:通过特征提取与端到端模型分类的融合来识别面部变化的深度面部表情

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Expression recognition is an important direction for computers to understand human emotions and an important aspect of human-computer interaction. Expression recognition refers to the selection of an expression state from a still photo or video sequence to determine the emotional and psychological changes to the character.Spectral Supervised Canonical Correlation Analysis has been used for Feature extraction. For proper classification VGG119 and softmax has been used. Facial variations such as redundant information in image, illumination variance and overfitting have been addressed in this paper. The images have been preprocessed using face detection, data augmentation and image normalization. After down-sampling, Spectral Supervised Canonical Correlation Analysis (SSCCA) holds the dimensions with factor data which constructs affinity matrix that incorporates both the class information and local structure of the data points. Features with having massive discriminative details have been taken. In order to attain low frequency coefficients more effectively the local structural information will be effectively utilized using SSCCA. Data is further provided to VGG19 for proper training. Meanwhile, the proposed method is more effective and robust comparing other methods in the area.
机译:表情识别是计算机了解人的情感的重要方向,也是人机交互的重要方面。表情识别是指从静止的照片或视频序列中选择表情状态,以确定角色的情感和心理变化。光谱监督规范相关分析已用于特征提取。为了进行正确的分类,使用了VGG119和softmax。本文已经解决了面部变化,例如图像中的冗余信息,照度变化和过度拟合。图像已使用面部检测,数据增强和图像归一化进行了预处理。下采样后,频谱监督规范相关分析(SSCCA)保留具有因子数据的维,该数据构成了亲和力矩阵,该亲和力矩阵同时包含了类信息和数据点的局部结构。具有大量区分细节的功能已被采用。为了更有效地获得低频系数,将使用SSCCA有效地利用局部结构信息。数据会进一步提供给VGG19,以进行适当的培训。同时,与该领域的其他方法相比,该方法更有效,更健壮。

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