4.6 Article

An efficient automatic facial expression recognition using local neighborhood feature fusion

期刊

MULTIMEDIA TOOLS AND APPLICATIONS
卷 80, 期 7, 页码 10187-10212

出版社

SPRINGER
DOI: 10.1007/s11042-020-10105-2

关键词

Emotion; Facial expression; Local binary pattern; Local neighborhood encoded pattern; Feature fusion; Feature selection; Multiclass support vector machine

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A method utilizing feature fusion technique to analyze the association among adjacent pixels by combining LBP with LNEP for efficient texture representation is proposed. Experimental findings show that the hybrid feature outperforms individual features in recognition accuracy, particularly in noisy environments.
In computer vision, several feature extraction methods have been developed to differentiate the variations of facial expressions. But the effect of the relationship among the neighboring pixel is not considered in the existing texture encoding based method. This paper exploits the method to analyze the association among the adjacent pixels using feature fusion technique. For efficient texture representation, the proposed approach combines the Local Binary Pattern (LBP) with the Local Neighborhood Encoded Pattern (LNEP). The LBP feature encodes the relationship of adjacent pixels with respect to the central pixel whereas LNEP represents the relationship among the two closest local neighboring pixels of the current pixel. After concatenating LBP with LNEP, the most relevant features are selected using chi-square statistical analysis and classified using multiclass Support Vector Machine (SVM). Experimental findings show that the proposed hybrid feature performed better than an individual feature and it achieves an average recognition accuracy of 97.86% and 97.11% on CK+ and MMI dataset, respectively. The effectiveness of the reduced hybrid feature is also evaluated under a noisy environment and the results show better performance in such conditions.

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