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A Smile Detection Method Based on Improved LeNet-5 and Support Vector Machine

机译:基于改进的LeNet-5和支持向量机的微笑检测方法

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摘要

Conventional facial expression recognition methods usually deal with frontal face images via only one or several features, which are easy to loss useful information and sensitive to face poses, scales and noise. As an interesting application of facial expression, this paper proposes an effective smile detection method under unconstrained scenarios, employing convolution neural network to learn and automatically extract discriminative features from a large number of human face images. Specifically, our method firstly converts the original color images to grayscale images, and due to the important role of mouth in expression analysis, we then localizes the mouth region according to 5 key points on the face. After the brightness adjustment and size normalization, the mouth images are input as training images of an improved LeNet-5 model to learn and automatically extract the discriminative features of the mouth regions. Finally, a SVM classifier is trained to distinguish smiling or non-smiling. Experimental results of the public MTFL database and GENKI-4K database show that the accuracy rates of our method are up to 87.81% and 86.80%, respectively.
机译:常规的面部表情识别方法通常仅通过一个或几个特征处理正面的面部图像,这些特征容易丢失有用的信息并且对面部的姿势,比例和噪声敏感。作为面部表情的有趣应用,本文提出了一种在无约束情况下的有效笑容检测方法,该方法利用卷积神经网络来学习并自动从大量人脸图像中提取区分特征。具体来说,我们的方法首先将原始的彩色图像转换为灰度图像,并且由于嘴巴在表情分析中的重要作用,因此我们根据面部的5个关键点对嘴巴区域进行定位。在进行亮度调整和大小归一化之后,将嘴巴图像输入为改进的LeNet-5模型的训练图像,以学习并自动提取嘴巴区域的判别特征。最后,训练SVM分类器以区分微笑或非微笑。公开的MTFL数据库和GENKI-4K数据库的实验结果表明,该方法的准确率分别达到87.81%和86.80%。

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