首页> 外文会议>Image Processing, 2004. ICIP '04. 2004 International Conference on >Fast facial feature extraction using a deformable shape model with Haar-wavelet based local texture attributes
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Fast facial feature extraction using a deformable shape model with Haar-wavelet based local texture attributes

机译:使用具有基于Haar小波的局部纹理属性的可变形形状模型快速提取面部特征

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Wc propose a fast and improved facial feature extraction technique for embedded face-recognition applications. This technique applies to both face alignment and recognition and significantly improves three aspects. First, we introduce the local texture attributes to a statistical face model. A texture attribute characterizes the 2-D local feature structures and is used to guide the model deformation. This provides more robustness and faster convergence than with conventional ASM (active shape model). Second, the local texture attributes are modelled by Haar-wavelets, yielding faster processing and more robustness with respect to low-quality images. Third, we use a gradient-based method for model initialization, which improves the convergence. We have obtained good results dealing with test faces that are quite dissimilar with the faces used for statistical training. The convergence area of our proposed method almost quadruples compared to ASM. The Haar-wavelet transform successfully compensates for the additional cost of using 2-D texture features. The algorithm has also been tested in practice with a Webcam, giving (near) real-time performance and good extraction results.
机译:WC提出了一种快速和改进的嵌入式面部识别应用的面部特征提取技术。这种技术适用于面部对准和识别,并显着提高了三个方面。首先,我们将本地纹理属性介绍到统计面部模型。纹理属性表征了2-D本地特征结构,用于指导模型变形。这提供了比传统ASM(主动形状模型)更强大和更快的收敛。其次,局部纹理属性由HAAR-小波建模,相对于低质量图像产生更快的处理和更高的鲁棒性。第三,我们使用基于梯度的模型初始化方法,这提高了收敛性。我们获得了处理面的良好成果,这些测试面与用于统计培训的面孔非常不同。我们所提出的方法的收敛面积几乎与ASM相比四分之一。 Haar-小波变换成功补偿了使用2-D纹理功能的额外成本。该算法还通过网络摄像头在实践中进行了测试,赋予(近)实时性能和良好的提取结果。

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