Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

FastDVDnet: Towards Real-Time Deep Video Denoising Without Flow Estimation

About

In this paper, we propose a state-of-the-art video denoising algorithm based on a convolutional neural network architecture. Until recently, video denoising with neural networks had been a largely under explored domain, and existing methods could not compete with the performance of the best patch-based methods. The approach we introduce in this paper, called FastDVDnet, shows similar or better performance than other state-of-the-art competitors with significantly lower computing times. In contrast to other existing neural network denoisers, our algorithm exhibits several desirable properties such as fast runtimes, and the ability to handle a wide range of noise levels with a single network model. The characteristics of its architecture make it possible to avoid using a costly motion compensation stage while achieving excellent performance. The combination between its denoising performance and lower computational load makes this algorithm attractive for practical denoising applications. We compare our method with different state-of-art algorithms, both visually and with respect to objective quality metrics.

Matias Tassano, Julie Delon, Thomas Veit• 2019

Related benchmarks

TaskDatasetResultRank
Video DenoisingSet8
PSNR36.44
136
Video DenoisingSet8 (test)
PSNR36.44
127
Video DenoisingDAVIS
PSNR38.71
79
Video DenoisingDAVIS 2017 (test)
PSNR38.71
60
Video DenoisingDAVIS 2017
PSNR38.71
51
Video DenoisingDAVIS (test)
PSNR38.45
37
Low-light Video EnhancementSMOID Gain 15 (test)
PSNR40.66
15
Low-light Video EnhancementSMOID Gain 0 (test)
PSNR40.37
15
Low-light Video EnhancementSMOID Gain 30 (test)
PSNR40.59
15
Low-light Raw Video DenoisingLLRVD (test)
PSNR36.39
15
Showing 10 of 20 rows

Other info

Follow for update