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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Facial Expression Recognition Algorithm Based on Fusion of Transformed Multilevel Features and Improved Weighted Voting SVM
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Facial Expression Recognition Algorithm Based on Fusion of Transformed Multilevel Features and Improved Weighted Voting SVM

机译:基于转换多级特征融合的面部表情识别算法及改进加权投票SVM

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In allusion to the shortcomings of traditional facial expression recognition (FER) that only uses a single feature and the recognition rate is not high, a FER method based on fusion of transformed multilevel features and improved weighted voting SVM (FTMS) is proposed. The algorithm combines the transformed traditional shallow features and convolutional neural network (CNN) deep semantic features and uses an improved weighted voting method to make a comprehensive decision on the results of the four trained SVM classifiers to obtain the final recognition result. The shallow features include local Gabor features, LBP features, and joint geometric features designed in this study, which are composed of distance and deformation characteristics. The deep feature of CNN is the multilayer feature fusion of CNN proposed in this study. This study also proposes to use a better performance SVM classifier with CNN to replace Softmax since the poor distinction between facial expressions. Experiments on the FERPlus database show that the recognition rate of this method is 17.2% higher than that of the traditional CNN, which proves the effectiveness of the fusion of the multilayer convolutional layer features and SVM. FTMS-based facial expression recognition experiments are carried out on the JAFFE and CK+ datasets. Experimental results show that, compared with the single feature, the proposed algorithm has higher recognition rate and robustness and makes full use of the advantages and characteristics of different features.
机译:在暗指传统面部表情识别的(FER),仅使用一个单一的功能,并识别率不高的基础上,变换多级特征融合一个FER方法和改进的加权投票SVM(FTMS)的缺点,提出了该算法结合了传统的转化浅的特点和卷积神经网络(CNN)深层语义特征,并使用改进的加权投票方式进行的四个训练的SVM分类结果的综合决策,得到最终的识别结果。浅特征包括局部Gabor特征,LBP特征和关节的几何特征在本研究中设计的,这是由距离和变形特性。 CNN的深层特征是本研究提出CNN的多层特征融合。这项研究还提出使用更好的性能SVM分类与CNN,以取代自添加Softmax面部表情之间的差的区别。在FERPlus数据库的实验表明该方法的识别率比传统的CNN,这证明的多层卷积层的特征和SVM融合的功效更高17.2%。基于FTMS-面部表情识别实验在JAFFE和CK +数据集进行的。实验结果表明,与单一功能相比,该算法具有较高的识别率和稳健性和充分利用的优势和不同的特征特性。

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