FIR2FVR: Analysis and Benchmarking of Extending Blind
Face Image Restoration to Video
Abstract
Recent progress in blind face restoration has resulted in producing high-quality restored results for static images. However, efforts to extend these advancements to video scenarios have been minimal, partly because of the absence of benchmarks that allow for a comprehensive and fair comparison. In this work, we first present a fair evaluation benchmark, in which we first introduce a Real-world Low-Quality Face Video benchmark (RFV-LQ), evaluate several leading image-based face restoration algorithms, and conduct a thorough systematical analysis of the benefits and challenges associated with extending blind face image restoration algorithms to degraded face videos. Our analysis identifies several key issues, primarily categorized into two aspects: significant jitters in facial components and noise-shape flickering between frames. To address these issues, we propose a Temporal Consistency Network (TCN) cooperated with alignment smoothing to reduce jitters and flickers in restored videos. TCN is a flexible component that can be seamlessly plugged into the most advanced face image restoration algorithms, ensuring the quality of image-based restoration is maintained as closely as possible. Extensive experiments have been conducted to evaluate the effectiveness and efficiency of our proposed TCN and alignment smoothing operation.
Materials
Paper |
Dataset: RFV-LQ (OneDrive) |
Agreement
- The RFV-LQ dataset is only available to download for non-commercial research purposes. The copyright remains with the original owners of the video.
- All videos of the RFV-LQ dataset are obtained from the Internet which are not property of our institutions. Our institution are not responsible for the content nor the meaning of these videos.
- The distribution of identities in the RFV-LQ datasets may not be representative of the global human population. Please be careful of unintended societal, gender, racial and other biases when using this dataset.
Citation
@ARTICLE{10693312, author={Wang, Zhouxia and Zhang, Jiawei and Wang, Xintao and Chen, Tianshui and Shan, Ying and Wang, Wenping and Luo, Ping}, journal={IEEE Transactions on Image Processing}, title={Analysis and Benchmarking of Extending Blind Face Image Restoration to Videos}, year={2024}, volume={33}, number={}, pages={5676-5687}, doi={10.1109/TIP.2024.3463414}}
Contact
If you have any question, please contact Zhouxia Wang at zhouzi1212@gmail.com.