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Multi-view 3D face reconstruction with deep recurrent neural networks

机译:深度递归神经网络的多视图3D人脸重建

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Image-based 3D face reconstruction has great potential in different areas, such as facial recognition, facial analysis, and facial animation. Due to the variations in image quality, single-image-based 3D face reconstruction might not be sufficient to accurately reconstruct a 3D face. To overcome this limitation, multi-view 3D face reconstruction uses multiple images of the same subject and aggregates complementary information for better accuracy. Though theoretically appealing, there are multiple challenges in practice. Among these challenges, the most significant is that it is difficult to establish coherent and accurate correspondence among a set of images, especially when these images are captured in different conditions. In this paper, we propose a method, Deep Recurrent 3D FAce Reconstruction (DRFAR), to solve the task ofmulti-view 3D face reconstruction using a subspace representation of the 3D facial shape and a deep recurrent neural network that consists of both a deep con-volutional neural network (DCNN) and a recurrent neural network (RNN). The DCNN disentangles the facial identity and the facial expression components for each single image independently, while the RNN fuses identity-related features from the DCNN and aggregates the identity specific contextual information, or the identity signal, from the whole set of images to predict the facial identity parameter, which is robust to variations in image quality and is consistent over the whole set of images. Through extensive experiments, we evaluate our proposed method and demonstrate its superiority over existing methods.
机译:基于图像的3D面部重建在不同领域具有巨大潜力,例如面部识别,面部分析和面部动画。由于图像质量的变化,基于单图像的3D人脸重建可能不足以准确地重建3D人脸。为了克服此限制,多视图3D人脸重建使用同一主题的多个图像并聚集补充信息以提高准确性。尽管从理论上讲吸引人,但在实践中仍存在许多挑战。在这些挑战中,最重要的是,很难在一组图像之间建立连贯且准确的对应关系,尤其是在不同条件下捕获这些图像时。在本文中,我们提出了一种深度递归3D面部重构(DRFAR)方法,以解决使用3D面部形状的子空间表示和由深度约束组成的深度递归神经网络的多视图3D面部重构的任务。进化神经网络(DCNN)和递归神经网络(RNN)。 DCNN独立地解开每个单个图像的面部身份和面部表情成分,而RNN融合来自DCNN的与身份相关的特征,并从整个图像集中聚合特定于身份的上下文信息或身份信号,以预测面部识别参数,对图像质量的变化具有鲁棒性,并且在整个图像集上保持一致。通过广泛的实验,我们评估了我们提出的方法,并证明了其相对于现有方法的优越性。

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