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Facial Feature Point Extraction Using the Adaptive Mean Shape in Active Shape Model

机译:活动形状模型中基于自适应平均形状的人脸特征点提取

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The fixed mean shape that is built from the statistical shape model produces an erroneous feature extraction result when ASM is applied to multipose faces. To remedy this problem the mean shape vector which is similar to an input face image is needed. In this paper, we propose the adaptive mean shape to extract facial features accurately for non frontal face. It indicates the mean shape vector that is the most similar to the face form of the input image. Our experimental results show that the proposed method obtains feature point positions with high accuracy and significantly improving the performance of facial feature extraction over and above that of the original ASM.
机译:当将ASM应用于多张面孔时,根据统计形状模型构建的固定平均形状会产生错误的特征提取结果。为了解决这个问题,需要类似于输入面部图像的平均形状矢量。在本文中,我们提出了自适应均值形状来准确地提取非正面人脸的面部特征。它表示与输入图像的脸部形状最相似的平均形状矢量。我们的实验结果表明,所提出的方法能够以较高的精度获得特征点位置,并显着提高了原始ASM的面部特征提取性能。

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