基于图像和视差数据融合的鲁棒AAM拟合

Joerg Liebelt, Jing Xiao, Jie Yang
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引用次数: 20

摘要

主动外观模型(aam)已被广泛用于表示人脸的外观和形状变化。将AAM拟合到图像中可以恢复人脸姿态及其可变形的形状和变化的外观。成功的拟合要求AAM具有足够的通用性,以覆盖图像中所有可能的面部外观和形状。这种通用AAM在实践中往往难以获得,特别是在图像质量较低或出现遮挡的情况下。为了在这种情况下实现鲁棒的AAM拟合,本文提出将立体相机获取的视差数据与图像拟合过程相结合。我们开发了一种迭代多级算法,该算法结合了对2D图像的高效AAM拟合和对视差数据的鲁棒3D形状对齐。对会议场景低分辨率图像的人脸跟踪实验表明,该方法比原有的二维AAM拟合算法具有更好的性能。我们还演示了该方法在面部表情识别任务中的应用。
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Robust AAM Fitting by Fusion of Images and Disparity Data
Active Appearance Models (AAMs) have been popularly used to represent the appearance and shape variations of human faces. Fitting an AAM to images recovers the face pose as well as its deformable shape and varying appearance. Successful fitting requires that the AAM is sufficiently generic such that it covers all possible facial appearances and shapes in the images. Such a generic AAM is often difficult to be obtained in practice, especially when the image quality is low or when occlusion occurs. To achieve robust AAM fitting under such circumstances, this paper proposes to incorporate the disparity data obtained from a stereo camera with the image fitting process. We develop an iterative multi-level algorithm that combines efficient AAM fitting to 2D images and robust 3D shape alignment to disparity data. Experiments on tracking faces in low-resolution images captured from meeting scenarios show that the proposed method achieves better performance than the original 2D AAM fitting algorithm. We also demonstrate an application of the proposed method to a facial expression recognition task.
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