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  4. Divergence-Based Adaptive Extreme Video Completion
 
conference paper

Divergence-Based Adaptive Extreme Video Completion

El Helou, Majed  
•
Zhou, Ruofan  
•
Schmutz, Frank
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April 14, 2020
2020 Ieee International Conference On Acoustics, Speech, And Signal Processing
IEEE International Conference on Acoustics, Speech, and Signal Processing (ICASSP)

Extreme image or video completion, where, for instance, we only retain 1% of pixels in random locations, allows for very cheap sampling in terms of the required pre-processing. The consequence is, however, a reconstruction that is challenging for humans and inpainting algorithms alike. We propose an extension of a state-of-the-art extreme image completion algorithm to extreme video completion. We analyze a color-motion estimation approach based on color KL-divergence that is suitable for extremely sparse scenarios. Our algorithm leverages the estimate to adapt between its spatial and temporal filtering when reconstructing the sparse randomly-sampled video. We validate our results on 50 publicly-available videos using reconstruction PSNR and mean opinion scores.

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