论特征聚合在人脸重构中的重要性

Xiang Xu, Ha A. Le, I. Kakadiaris
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引用次数: 3

摘要

这项工作的目标是寻求设计一个深度神经网络的原则,用于从单个图像重建三维人脸。为了简化评估,我们生成了一个合成数据集并将其用于评估。我们对基于E2FAR及其变体的端到端人脸重建算法进行了大量实验,并分析了其能够成功应用于三维人脸重建的原因。通过对比研究,我们得出结论,不同层的特征聚合是训练出更好的用于三维人脸重建的神经网络的关键。在此基础上,提出了一种人脸重构特征聚合网络(FR-FAN),该网络在合成验证集上获得了较基线显著的改进。我们在现有流行的室内和野外2D-3D数据集上评估我们的模型。大量实验表明,FR-FAN在BU-3DFE和JNU-3D上的性能分别比E2FAR高16.50%和9.54%。最后,我们对控制数据集进行的敏感性分析表明,我们设计的网络对姿势、光照和表情的大变化具有鲁棒性。
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On the Importance of Feature Aggregation for Face Reconstruction
The goal of this work is to seek principles of designing a deep neural network for 3D face reconstruction from a single image. To make the evaluation simple, we generated a synthetic dataset and used it for evaluation. We conducted extensive experiments using an end-to-end face reconstruction algorithm using E2FAR and its variations, and analyzed the reason why it can be successfully applied for 3D face reconstruction. From the comparative studies, we conclude that feature aggregation from different layers is a key point to training better neural networks for 3D face reconstruction. Based on these observations, a face reconstruction feature aggregation network (FR-FAN) is proposed, which obtains significant improvements compared with baselines on the synthetic validation set. We evaluate our model on existing popular indoor and in-the-wild 2D-3D datasets. Extensive experiments demonstrate that FR-FAN performs 16.50% and 9.54% better than E2FAR on BU-3DFE and JNU-3D, respectively. Finally, the sensitivity analysis we performed on controlled datasets demonstrates that our designed network is robust to large variations of pose, illumination, and expressions.
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