论文标题
学习基于流动的功能翘曲,用于面部额叶,照明不一致的监督
Learning Flow-based Feature Warping for Face Frontalization with Illumination Inconsistent Supervision
论文作者
论文摘要
尽管在基于深度学习的面部额叶方法方面取得了进步,但由于训练过程中的巨大姿势和照明差异,保留额叶面部合成的照片真实和照明仍然具有挑战性。我们提出了一种新型的基于流动的功能翘曲模型(FFWM),该模型可以学会合成光合逼真的和照明,以保留额叶图像,并具有照明不一致的监督。具体而言,提出了保留照明模块(IPM)来学习从照明不一致的图像对保存图像合成的照明。 IPM包括两个途径,这些途径可确保合成的额叶图像保存并提供细节。此外,引入了扭曲的注意模块(WAM),以减少功能级别的姿势差异,从而更有效地合成正面图像,并保留更多的概况图像详细信息。 WAM中的注意力机制有助于减少轮廓和额叶图像之间的位移引起的伪像。定量和定性的实验结果表明,我们的FFWM可以合成光真逼真和照明来保存额叶图像,并与最新结果相对表现。
Despite recent advances in deep learning-based face frontalization methods, photo-realistic and illumination preserving frontal face synthesis is still challenging due to large pose and illumination discrepancy during training. We propose a novel Flow-based Feature Warping Model (FFWM) which can learn to synthesize photo-realistic and illumination preserving frontal images with illumination inconsistent supervision. Specifically, an Illumination Preserving Module (IPM) is proposed to learn illumination preserving image synthesis from illumination inconsistent image pairs. IPM includes two pathways which collaborate to ensure the synthesized frontal images are illumination preserving and with fine details. Moreover, a Warp Attention Module (WAM) is introduced to reduce the pose discrepancy in the feature level, and hence to synthesize frontal images more effectively and preserve more details of profile images. The attention mechanism in WAM helps reduce the artifacts caused by the displacements between the profile and the frontal images. Quantitative and qualitative experimental results show that our FFWM can synthesize photo-realistic and illumination preserving frontal images and performs favorably against the state-of-the-art results.