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Fully Automatic Video Colorization with Self-Regularization and Diversity

About

We present a fully automatic approach to video colorization with self-regularization and diversity. Our model contains a colorization network for video frame colorization and a refinement network for spatiotemporal color refinement. Without any labeled data, both networks can be trained with self-regularized losses defined in bilateral and temporal space. The bilateral loss enforces color consistency between neighboring pixels in a bilateral space and the temporal loss imposes constraints between corresponding pixels in two nearby frames. While video colorization is a multi-modal problem, our method uses a perceptual loss with diversity to differentiate various modes in the solution space. Perceptual experiments demonstrate that our approach outperforms state-of-the-art approaches on fully automatic video colorization. The results are shown in the supplementary video at https://youtu.be/Y15uv2jnK-4

Chenyang Lei, Qifeng Chen• 2019

Related benchmarks

TaskDatasetResultRank
Full-image colorizationCOCO Stuff (val)
LPIPS0.177
18
Video ColorizationDAVIS medium frame length
FID18.55
10
Video ColorizationVidevo long frame length
FID16.28
10
Full-image colorizationImageNet (ctest10k)
LPIPS0.202
9
Full-image colorizationPlaces205 (val)
LPIPS0.175
9
Video ColorizationVIDEVO 20
CDC1.15
8
Video ColorizationDAVIS 30
CDC (True)1.35
8
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