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A NOVEL FEATURE EXTRACTION METHOD USING PYRAMID HISTOGRAM OF ORIENTATION GRADIENTS FOR SMILE RECOGNITION

机译:一种新的特征提取方法,采用金字塔直方图对微笑识别的方向梯度

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Recognizing smiles is of much importance for detecting happy moods. Gabor features are conventionally widely applied to facial expression recognition, but the number of Gabor features is usually too large. We proposed to use Pyramid Histogram of Oriented Gradients (PHOG) as the features extracted for smile recognition in this paper. The comparisons between the PHOG and Gabor features using a publicly available dataset demonstrated that the PHOG with a significantly shorter vector length could achieve as high a recognition rate as the Gabor features did. Furthermore, the feature selection conducted by an AdaBoost algorithm was not needed when using the PHOG features. To further improve the recognition performance, we combined these two feature extraction methods and achieved the best smile recognition rate, indicating a good value of the PHOG features for smile recognitions.
机译:识别微笑对于检测幸福的情绪非常重要。 Gabor特征是通常广泛应用于面部表情识别,但Gabor特征的数量通常太大。我们建议使用面向梯度(PHOG)的金字塔直方图,因为本文提取了微笑识别的功能。使用公共数据集的Phog和Gabor功能之间的比较显示,随着GABOR功能所做的,PHOG具有显着较短的向量长度较短的识别率。此外,使用Phog特征时不需要由Adaboost算法进行的特征选择。为了进一步提高识别性能,我们将这两个特征提取方法组合并实现了最佳的微笑识别率,表明Phog特征对于微笑识别的良好价值。

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