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3D AAM based face alignment under wide angular variations using 2D and 3D data

机译:使用2D和3D数据在大角度变化下基于3D AAM的人脸对齐

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Active Appearance Models (AAMs) are widely used to estimate the shape of the face together with its orientation, but AAM approaches tend to fail when the face is under wide angular variations. Although it is feasible to capture the overall 3D face structure using 3D data from range cameras, the locations of facial features are often estimated imprecisely or incorrectly due to depth measurement uncertainty. Face alignment using 2D and 3D images suffer from different issues and have varying reliability in different situations. The existing approaches introduce a weighting function to balance 2D and 3D alignments in which the weighting function is tuned manually and the sensor characteristics are not taken into account. In this paper, we propose to balance 3D face alignment using 2D and 3D data based on the observed data and the sensors characteristics. The feasibility of wide-angle face alignment is demonstrated using two different sets of depth and conventional cameras. The experimental results show that a stable alignment is achieved with a maximum improvement of 26% compared to 3D AAM using 2D image and 30% improvement over the state-of-the-art 3DMM methods in terms of 3D head pose estimation.
机译:主动外观模型(AAM)被广泛用于估计脸部形状及其方向,但是当脸部在较大角度变化下,AAM方法往往会失败。尽管使用来自测距相机的3D数据捕获整个3D面部结构是可行的,但由于深度测量的不确定性,经常不准确或错误地估计了面部特征的位置。使用2D和3D图像进行面部对齐会遇到不同的问题,并且在不同情况下具有不同的可靠性。现有方法引入了加权函数以平衡2D和3D对准,其中手动调整加权函数并且不考虑传感器特性。在本文中,我们建议根据观察到的数据和传感器特性,使用2D和3D数据来平衡3D人脸对齐。使用两组不同的深度相机和传统相机证明了广角面部对齐的可行性。实验结果表明,与使用2D图像的3D AAM相比,可以实现稳定的对齐,与3D AAM相比,最大改善了26%,在3D头部姿势估计方面,与最新的3DMM方法相比,改善了30%。

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