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Expression-invariant face recognition using depth and intensity dual-tree complex wavelet transform features

机译:使用深度和强度双树复小波变换特征的表情不变的人脸识别

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A new multimodal expression-invariant face recognition method is proposed by extracting features of rigid and semirigid regions of the face which are less affected by facial expressions. Dual-tree complex wavelet transform is applied in one decomposition level to extract the desired feature from range and intensity images by transforming the regions into eight subimages, consisting of six band-pass subimages to represent face details and two low-pass subimages to represent face approximates. The support vector machine has been used to classify both feature fusion and score fusion modes. To test the algorithm, BU-3DFE and FRGC v2.0 datasets have been selected. The BU-3DFE dataset was tested by low intensity versus high intensity and high intensity versus low intensity strategies using all expressions in both training and testing stages in different levels. Findings include the best rank-1 identification rate of 99.8% and verification rate of 100% at a 0.1% false acceptance rate. The FRGC v2.0 was tested by the neutral versus non-neutral strategy, which applies images without expression in training and with expression in the testing stage, thereby achieving the best rank-1 identification rate of 93.5% and verification rate of 97.4% at a 0.1% false acceptance rate. (C) 2015 SPIE and IS&T
机译:通过提取受面部表情影响较小的刚性和半刚性区域特征,提出了一种新的多模态不变表情识别方法。通过将区域转换成八个子图像,其中包括六个代表区域细节的带通子图像和两个代表脸部细节的低通子图像,将双树复小波变换应用于一个分解级别,以从距离和强度图像中提取所需特征近似。支持向量机已用于分类特征融合和分数融合模式。为了测试该算法,已选择BU-3DFE和FRGC v2.0数据集。 BU-3DFE数据集使用训练和测试阶段中不同级别的所有表达式,通过低强度与高强度策略以及高强度与低强度策略进行了测试。调查结果包括最佳的1级识别率为99.8%,验证率为100%(错误接受率为0.1%)。 FRGC v2.0通过中性与非中性策略进行了测试,该方法将图像在训练中不带表情并且在测试阶段带表情地应用,从而达到最佳的1级识别率93.5%和97.4%的验证率。 0.1%的错误接受率。 (C)2015 SPIE和IS&T

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