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Manifold feature integration for micro-expression recognition

机译:微表达式识别功能集成

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Recognition of micro-expressions depends on the key features provided in the form of the temporal information. It needs considerable effort, however, to manually design useful characteristics. Subtle or micro-facial expressions are much difficult than regular facial expressions rich in emotional expressions in a true environment to be identified. An easy solution is discussed in this paper to recognise facial micro-expressions that utilizes an algorithm mix for facial identification, feature extraction and classification. The technique proposed is a framework which incorporates handcrafted features and deep features. Local Binary Pattern-Three Orthogonal Planes (LBP-TOP) is the handcraft feature which combines spatial and time analysis to encapsulate regional facet movements. The deep feature model is a micro-expression fine-tuned model based on Convolutional Neural Network (CNN). Two classifiers, i.e. SVM and Softmax are trained with combined feature vectors produced by LBP-TOP and CNN functionalities. All seven widely-used micro-expression databases are evaluated in an experiment. Our research can be claimed as the first extensive experimental study on a big amount of the datasets to train and test the suggested model. The findings in the document show that the method proposed, although simple and straightforward, achieves a substantial increase in precision relative to other commonly recognized micro-expression techniques, which are trained and tested with just a few datasets.
机译:识别微表达式取决于以时间信息的形式提供的关键特征。然而,它需要相当大的努力来手动设计有用的特征。微妙或微观面部表情比富裕的面部表情在待定的真实环境中富含常规面部表情困难。本文讨论了一种简单的解决方案,以识别使用算法混合进行面部识别,特征提取和分类的面部微表达式。提出的技术是一个包含手工特征和深度特征的框架。本地二进制模式 - 三个正交平面(LBP-TOP)是手工特征,它结合了空间和时间分析来封装区域小平面运动。深度特征模型是基于卷积神经网络(CNN)的微表达微调模型。两个分类器,即SVM和SoftMax接受了由LBP-TOP和CNN功能产生的组合特征向量培训。所有七种广泛使用的微表达数据库都在实验中进行评估。我们的研究可以声称是关于大量数据集进行培训和测试建议的模型的第一个广泛的实验研究。该文件中的研究结果表明,虽然简单直截了当地,所提出的方法相对于其他普通公认的微表达技术实现了大量提高,但是只有几个数据集培训和测试。

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