Face De-Occlusion With Deep Cascade Guidance Learning

Ni Zhang, Nian Liu, Junwei Han, Kaiyuan Wan, Ling Shao

Research output: Contribution to journalArticlepeer-review

10 Scopus citations

Abstract

Occlusion is a challenging yet commonly seen problem for facial perception. Existing works resort to deep learning models and perform model training on synthesized data due to the lack of paired real-world data. As a result,they usually perform unsatisfactorily on real-world occluded faces because of domain gaps. In this paper, we decompose the face de-occlusion task into three stages, i.e., occlusion detection, face parsing, and face reconstruction, to alleviate this issue. We first perform occlusion detection and use its results as guidance for the second stage to conduct occlusion-free face parsing. As such, face de-occlusion is first performed on the face paring space with less difficulty. We can train these two stages on both synthesized and real-world images, hence can obtain accurate results for the latter. In the last stage, we use the domain-agnostic occlusion detection map and the face parsing map as the guidance to conduct face reconstruction, thus can reduce the impact of appearance information and improve the model performance on real-world data. Aiming at improving the model capacity of inferring occluded facial appearance, we also propose two types of reference modules to use relevant facial parts to enhance the reconstruction of occluded regions. Consequently, our proposed model achieves promising face de-occlusion results on real-world images.

Original languageEnglish
Pages (from-to)3217-3229
Number of pages13
JournalIEEE Transactions on Multimedia
Volume25
DOIs
StatePublished - 2023

Keywords

  • Face de-occlusion
  • face inpainting
  • face parsing
  • GAN

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