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Facial Expression Recognition In The Wild Using Bidirectional Convolutional Neural Network

机译:使用双向卷积神经网络在野外的面部表情识别

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The Static Facial Expressions In The Wild database (SFEW) contains unconstrained facial expressions close to the real world. In former research, current machine learning techniques are not robust enough for such an uncontrolled environment and it remains challenging nowadays. Coping with such task, we augment the state-of-art model which achieved the best performance for in the wild dataset and proposed two boosting algorithms of adding bidirectionality to convolution neural network based on the bidirectional neural network prototype, which is the first to integrate these two notions in literature. We also conducted experiments applying the decision fusion framework for classification, the proposed framework is trained simultaneously forward and backward, the final output is generated through voting mechanism. In this paper, two algorithms of adding bidirectionality to CNN are proposed, a framework for the facial expression recognition task (ensemble of HOG face detector and CNN with decision fusion and bidirectionality) is introduced and the classification result is listed, compared, and analyzed. The empirical results affirmed that the bidirectional boosting achieved good performance on the SFEW benchmark. Furthermore, some future works for precision improvement based on the existing deficiency of the current model are presented.
机译:野生数据库(SFew)中的静态面部表达式包含靠近真实世界的无约束面部表情。在前面的研究中,目前的机器学习技术对于这种不受控制的环境不够强大,并且现在仍然挑战。应对这些任务,我们增强了最先进的模型,该模型在野外数据集中实现了最佳性能,并提出了基于双向神经网络原型基于双向神经网络原型向卷积神经网络添加双向升级算法,这是第一个集成的这两个概念在文献中。我们还进行了应用决策融合框架进行分类的实验,所提出的框架同时向前和向后培训,最终输出是通过投票机制产生的。在本文中,提出了两种向CNN添加双向性的算法,引入了用于面部表情识别任务的框架(猪面检测器和CNN的集合,具有决定融合和双向的CNN),并列出了分类结果,并分析并分析了分类结果。经验结果肯定了双向提升对SFEW基准造成了良好的性能。此外,介绍了基于当前模型的现有缺陷的精确改善的一些未来作品。

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