Facial expression recognition based on combination of spatio-temporal and spectral features in local facial regions

Nakisa Abounasr, H. Pourghassem
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Abstract

This paper presents two new approaches for facial expression recognition based on digital curvelet transform and local binary patterns from three orthogonal planes (LBP-TOP) for both still image and image sequences. The features are extracted by using the digital curvelet transform on facial regions in still image. In this approach, some sub-bands correspond to angle of facial region is used. These sub-bands consist of more frequency information. The digital curvelet coefficients and LBP-TOP are represented to combine spatio-temporal and spectral features for image sequences. The obtained results by our proposed approaches on the Cohn-Kanade facial expression database have acceptable recognition rates of 91.90% and 88.38% for still image and image sequences, respectively.
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基于局部区域时空特征与光谱特征相结合的面部表情识别
针对静止图像和图像序列,提出了基于数字曲线变换和三正交平面局部二值模式(LBP-TOP)的面部表情识别新方法。利用数字曲线变换对静止图像中的人脸区域进行特征提取。在这种方法中,使用了一些与面部区域角度相对应的子带。这些子带包含更多的频率信息。利用数字曲线系数和LBP-TOP来结合图像序列的时空和光谱特征。在Cohn-Kanade面部表情数据库上,我们提出的方法对静止图像和图像序列的可接受识别率分别为91.90%和88.38%。
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