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Automatic Pose Correction for Local Feature-Based Face Authentication

机译:基于本地特征的人脸认证的自动姿势校正

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摘要

In this paper, we present an automatic face authentication system. Accurate segmentation of prominent facial features is accomplished by means of an extension of the Active Shape Model (ASM) approach, the so-called Active Shape Model with Invariant Optimal Features (IOF-ASM). Once the face has been segmented, a pose correction step is applied, so that frontal face images are synthesized. For the generation of these virtual images, we make use of a subset of the shape parameters extracted from a training dataset and Thin Plate Splines texture mapping. Afterwards, sets of local features are computed from these virtual images. The performance of the system is demonstrated on configurations Ⅰand Ⅱof the XM2VTS database.
机译:在本文中,我们提出了一种自动人脸认证系统。通过扩展活动形状模型(ASM)方法(即具有不变最佳特征的活动形状模型(IOF-ASM)),可以实现对突出的面部特征的准确分割。一旦脸部被分割,就应用姿势校正步骤,以便合成正面脸部图像。为了生成这些虚拟图像,我们使用了从训练数据集和Thin Plate Splines纹理映射中提取的形状参数的子集。然后,根据这些虚拟图像计算局部特征集。在XM2VTS数据库的配置Ⅰ和Ⅱ上证明了该系统的性能。

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