核心概念
The core message of this paper is to introduce a novel perception-oriented video frame interpolation paradigm called PerVFI, which tackles the challenges of blur and ghosting artifacts by incorporating an asymmetric synergistic blending module and a conditional normalizing flow-based generator.
摘要
The paper presents a new approach for video frame interpolation (VFI) called PerVFI, which aims to address the issues of blur and ghosting artifacts that persist in existing methods.
Key highlights:
- The authors identify two main challenges in VFI: inevitable motion errors and temporal supervision misalignment. Existing methods struggle to handle these issues, often resulting in blurred and ghosted results.
- To mitigate these challenges, PerVFI introduces an Asymmetric Synergistic Blending (ASB) module that utilizes features from both reference frames in an asymmetric manner. One frame emphasizes primary content, while the other provides complementary information.
- The ASB module employs a self-learned sparse quasi-binary mask to effectively control the blending process and address occlusion, helping to reduce ghosting and blur artifacts.
- PerVFI also utilizes a normalizing flow-based generator to model the conditional distribution of the output, which further facilitates the generation of clear and fine details.
- Extensive experiments demonstrate that PerVFI consistently outperforms state-of-the-art methods in terms of perceptual quality, even in the presence of inaccurate motion estimates.
统计
"Previous methods for Video Frame Interpolation (VFI) have encountered challenges, notably the manifestation of blur and ghosting effects."
"Ideally, with accurate motion estimates, the aforementioned procedure can yield satisfactory results. However, achieving error-free pixel-wise correspondence for real-world videos proves challenging, especially in the presence of large-scale motions."
"During the training phase, the ground truth (GT) intermediate frame only provides a reference at a specific time. However, in the case of a continuous natural video, scenes captured in the time interval between two frames can offer multiple potential solutions."
引用
"To mitigate these challenges, we propose a new paradigm called PerVFI (Perception-oriented Video Frame Interpolation)."
"Our approach incorporates an Asymmetric Synergistic Blending module (ASB) that utilizes features from both sides to synergistically blend intermediate features."
"To impose a stringent constraint on the blending process, we introduce a self-learned sparse quasi-binary mask which effectively mitigates ghosting and blur artifacts in the output."