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A ROI-guided deep architecture for robust facial expressions recognition

机译:一种用于强大的面部表情识别的ROI引导的深层架构

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摘要

This work proposes a robust facial expression recognition framework, focusing on discovering the region of interest (ROI) to train an effective face-specific of convolutional neural networks (CNN). By exploiting the relationships among ROI areas, the proposed deep architecture can improve the reliability of predicted targets. Our designed deep model is fine-tuned based on a pre-specified deep CNN instead of a new one trained from scratch. To increase the face expressions toward a robust deep CNN training, a novel data augmentation strategy called artificial face is designed. The performance of our deep architecture is evaluated on state-of-the-art databases such as CK+. To demonstrate the high generalizability of our approach, cross-database validations are conducted on the JAFFE and our own compiled Wild database. Comprehensive experiments have demonstrated the superiority of the method, i.e., achieving a recognition accuracy of 94.67% on the CK+ database, 53.77% on the JAFFE cross-database, 40.13% on the FER-2013 cross-database, and 37.25% on the Wild cross-database respectively. (C) 2020 Elsevier Inc. All rights reserved.
机译:这项工作提出了一种强大的面部表情识别框架,专注于发现感兴趣的区域(ROI)来培养有效的卷积神经网络(CNN)的有效面对特征。通过利用ROI区域之间的关系,所提出的深度架构可以提高预测目标的可靠性。我们设计的深层模型基于预先指定的深层CNN进行微调,而不是从头开始培训的新型。为了将面部表达朝向强大的CNN培训,设计了一种名为人造脸的新型数据增强策略。我们深度架构的性能是在最先进的数据库(如CK +)的数据库中的表现。为了展示我们方法的高度普遍性,跨数据库验证在jaffe和我们自己的编译野生数据库上进行。综合实验已经证明了该方法的优越性,即在CK +数据库上实现了94.67%的识别准确性,在jaffe交叉数据库上的53.77%,FER-2013跨数据库的40.13%,野外37.25%分别交叉数据库。 (c)2020 Elsevier Inc.保留所有权利。

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