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Hybrid clustering-based 3D face modeling upon non-perfect orthogonality of frontal and profile views

机译:基于混合聚类的正面和轮廓视图非完美正交的3D人脸建模

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Multi view imaging has attracted increasing attention recently and has become one of the potential avenues in future video systems. We aim to make more reliable and robust automatic feature extraction and natural 3D feature construction from 2D features detected on a pair of frontal and profile view face images. We propose several heuristic algorithms to minimize possible errors introduced by prevalent non-perfect orthogonal condition and non-coherent luminance. In our approach, we first extract the 2D features that are visible to both cameras in both views. Then, we estimate the coordinates of the features in the hidden profile view based on the visible features extracted in the two orthogonal views. After that, based on the coordinates of the extracted features, we deform a 3D generic model to perform the desired deformation based modeling. Finally, the face model is texture-mapped by projecting the input 2D images onto the vertices of the face model. As the reconstructed 3D face model is MPEG4 compliant, it can be readily animated by standard MPEG4 facial animation parameters (FAPs). Present study proves the scope of resulted facial models for practical applications like face recognition and performance driven facial animation.
机译:多视图成像最近引起了越来越多的关注,并已成为未来视频系统中的潜在途径之一。我们的目标是根据在正面和侧面视图的一对面部图像上检测到的2D特征,使可靠的自动特征提取和自然3D特征构建变得更加可靠。我们提出了几种启发式算法,以最大程度地减少由普遍的非完美正交条件和非相干亮度引入的可能误差。在我们的方法中,我们首先提取两个视图在两个视图中均可见的2D特征。然后,我们基于在两个正交视图中提取的可见特征来估计隐藏轮廓视图中特征的坐标。之后,基于提取特征的坐标,我们对3D通用模型进行变形以执行所需的基于变形的建模。最后,通过将输入的2D图像投影到面部模型的顶点上来对面部模型进行纹理映射。由于重建的3D面部模型符合MPEG4,因此可以通过标准MPEG4面部动画参数(FAP)轻松对其进行动画处理。当前的研究证明了所得到的面部模型在诸如面部识别和性能驱动的面部动画之类的实际应用中的范围。

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