Model based Facial Expression Recognition using New Feature Space

Jin-Ok Kim
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引用次数: 2

Abstract

ABSTRACT This paper introduces a new model based method for facial expression recognition that uses facial grid angles as feature space. In order to be able to recognize the six main facial expression, proposed method uses a grid approach and therefore it establishes a new feature space based on the angles that each gird's edge and vertex form. The way taken in the paper is robust against several affine transformations such as translation, rotation, and scaling which in other approaches are considered very harmful in the overall accuracy of a facial expression recognition algorithm. Also, this paper demonstrates the process that the feature space is created using angles and how a selection process of feature subset within this space is applied with Wrapper approach. Selected features are classified by SVM, 3-NN classifier and classification results are validated with two-tier cross validation. Proposed method shows 94% classification result and feature selection algorithm improves results by up to 10% over the full set of feature.Keywords:Facial Expression Recognition, Features Space Generation, Wrapper Approach, Multi-Tier Cross Validation
基于模型的新特征空间面部表情识别
本文介绍了一种基于模型的人脸表情识别方法,该方法以人脸网格角度作为特征空间。为了能够识别六种主要的面部表情,该方法采用网格方法,从而基于每个网格的边缘和顶点形成的角度建立新的特征空间。本文所采用的方法对平移、旋转和缩放等仿射变换具有鲁棒性,而这些仿射变换在其他方法中被认为对面部表情识别算法的整体准确性非常有害。此外,本文还演示了使用角度创建特征空间的过程以及如何使用Wrapper方法在该空间内选择特征子集的过程。选取的特征通过支持向量机、3-NN分类器进行分类,分类结果通过两层交叉验证进行验证。该方法的分类结果达到94%,特征选择算法在完整特征集的基础上,将分类结果提高了10%。关键词:面部表情识别,特征空间生成,包装方法,多层交叉验证
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