Context-aware Synthesis for Video Frame Interpolation |
Simon Niklaus and Feng Liu |
Computer Science Department Portland State University |
Abstract |
Video frame interpolation algorithms typically estimate optical flow or its variations and then use it to guide the synthesis of an intermediate frame between two consecutive original frames. To handle challenges like occlusion, bidirectional flow between the two input frames is often estimated and used to warp and blend the input frames. However, how to effectively blend the two warped frames still remains a challenging problem. This paper presents a context-aware synthesis approach that warps not only the input frames but also their pixel-wise contextual information and uses them to interpolate a high-quality intermediate frame. Specifically, we first use a pre-trained neural network to extract per-pixel contextual information for input frames. We then employ a state-of-the-art optical flow algorithm to estimate bidirectional flow between them and pre-warp both input frames and their context maps. Finally, unlike common approaches that blend the pre-warped frames, our method feeds them and their context maps to a video frame synthesis neural network to produce the interpolated frame in a context-aware fashion. Our neural network is fully convolutional and is trained end to end. Our experiments show that our method can handle challenging scenarios such as occlusion and large motion and outperforms representative state-of-the-art approaches. |
Paper |
Simon Niklaus
and Feng Liu. Context-aware Synthesis for Video Frame Interpolation. IEEE CVPR 2018. PDF (Rank 1st in the relevant Middlebury benchmark) |
Related Paper |
Simon Niklaus,
Long Mai, and Feng Liu. Video Frame Interpolation via Adaptive
Separable Convolution. IEEE ICCV 2017. PDF Project Website Code Simon Niklaus, Long Mai, and Feng Liu. Video Frame Interpolation via Adaptive Convolution . IEEE CVPR 2017. PDF Project Website(spotlight) |
Demo Video |
Acknowledgment The example of the busy alley is used with permission from John Power. All the other examples were from the DAVIS Challenge, the Middlebury Computer Vision Benchmark, the Blender Foundation, the KITTI Benchmark, DVF (from UCF101), and RMIT3D.. |