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Towards High Fidelity Face Frontalization in the Wild

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Abstract

Face frontalization refers to the process of synthesizing the frontal view of a face from a given profile. Due to self-occlusion and appearance distortion in the wild, it is extremely challenging to recover faithful high-resolution results meanwhile preserve texture details. This paper proposes a high fidelity pose in-variant model (HF-PIM) to produce photographic and identity-preserving results. HF-PIM frontalizes the profiles through a novel texture fusion warping procedure and leverages a dense correspondence field to bind the 2D and 3D surface spaces. We decompose the prerequisite of warping into dense correspondence field estimation and facial texture map recovering, which are both well addressed by deep networks. Different from those reconstruction methods relying on 3D data, we also propose adversarial residual dictionary learning to supervise facial texture map recovering with only monocular images. Furthermore, a multi-perception guided loss is proposed to address the practical misalignment between the ground truth frontal and profile faces, allowing HF-PIM to effectively utilize multiple images during training. Quantitative and qualitative evaluations on five controlled and uncontrolled databases show that the proposed method not only boosts the performance of pose-invariant face recognition but also improves the visual quality of high-resolution frontalization appearances.

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Notes

  1. https://github.com/1adrianb/face-alignment.

  2. Visualization results produced by other methods are released by their authors. Different methods usually report visual examples of different identities. We try our best to find those identities reported by most methods.

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Acknowledgements

This work is funded by the National Key Research and Development Program of China (Grant Nos. 2016YFB1001001, 2017YFC0821602), the National Natural Science Foundation of China (Grant Nos. 61622310, 61427811, U1836217), and Beijing Natural Science Foundation (Grant No. JQ18017).

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Correspondence to Zhenan Sun.

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Communicated by Xavier Alameda-Pineda, Elisa Ricci, Albert Ali Salah, Nicu Sebe, Shuicheng Yan.

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Cao, J., Hu, Y., Zhang, H. et al. Towards High Fidelity Face Frontalization in the Wild. Int J Comput Vis 128, 1485–1504 (2020). https://doi.org/10.1007/s11263-019-01229-6

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