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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >Facial expression recognition based on Gabor features of salient patches and ACI-LBP
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Facial expression recognition based on Gabor features of salient patches and ACI-LBP

机译:基于Gabor特征的面部表情识别突出斑块和ACI-LBP

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Texture features of the salient patches are closely related to the facial expression recognition on face images. To obtain these features, we applied the Gabor wavelets to extract the relevant values on the whole-face and important regions such as the eyes, nose, and mouth of the face, and assigned different weights to them with respect to their different recognition effectiveness. Since the LBP operator is largely dependent on the center pixel and is easily to be affected by the lighting conditions, an Around Center Instable Local Binary Pattern (ACI-LBP) operator is applied in this research. The technique takes consideration of the relationship between the center point and the adjacent points, thus extends the representations of the fetures in the local region and is more robust to noise and illumination. To get the ACI-LBP, the LBP value is calculated first, then the Near Local Binary Pattern (N-LBP) value is calculated based on the distance between each pixel point and its neighborhood points in clockwise direction. The inconsistent values of LBP and N-LBP in corresponding positions are calculated in terms of their absolute values. In addition, a multi-scale histogram statistics method is adopted in the ACI-LBP extraction. Finally, the two parts features, Gabor and ACI-LBP, are merged as an integrated feature vector to classify and recognize the facial expression. Experimental results based on the JAFFE and CK facial databases show that the method can effectively improve the recognition accuracy of the facial expression recognition.
机译:突出斑块的纹理特征与面部图像上的面部表情识别密切相关。为了获得这些特征,我们应用了Gabor小波来提取整个面部和重要地区的相关值,如眼睛,鼻子和口腔,以及对它们的不同识别效果为它们分配了不同的权重。由于LBP操作员在很大程度上依赖于中心像素并且容易受到照明条件的影响,因此在该研究中应用了周围的中心不动的局部二进制图案(ACI-LBP)操作员。该技术考虑了中心点和相邻点之间的关系,从而延伸了局部区域中的凹陷的表示,并且对噪声和照明更鲁棒。为了获得ACI-LBP,首先计算LBP值,然后基于顺时针方向上的每个像素点和其邻点之间的距离来计算近局部二进制模式(N-LBP)值。在其绝对值方面计算相应位置中的LBP和N-LBP的不一致值。此外,在ACI-LBP提取中采用了多尺度直方图统计方法。最后,两个部分特征,Gabor和ACI-LBP被合并为集成的特征向量来分类和识别面部表情。基于jaffe和CK面部数据库的实验结果表明,该方法可以有效提高面部表情识别的识别准确性。

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