1 research outputs found
Non-Local Video Denoising by CNN
Non-local patch based methods were until recently state-of-the-art for image
denoising but are now outperformed by CNNs. Yet they are still the
state-of-the-art for video denoising, as video redundancy is a key factor to
attain high denoising performance. The problem is that CNN architectures are
hardly compatible with the search for self-similarities. In this work we
propose a new and efficient way to feed video self-similarities to a CNN. The
non-locality is incorporated into the network via a first non-trainable layer
which finds for each patch in the input image its most similar patches in a
search region. The central values of these patches are then gathered in a
feature vector which is assigned to each image pixel. This information is
presented to a CNN which is trained to predict the clean image. We apply the
proposed architecture to image and video denoising. For the latter patches are
searched for in a 3D spatio-temporal volume. The proposed architecture achieves
state-of-the-art results. To the best of our knowledge, this is the first
successful application of a CNN to video denoising.Comment: A shorter version of this work has been accepted at ICIP 2019 (A
NON-LOCAL CNN FOR VIDEO DENOISING). The results of v2 were improved compared
to v1 and the code was updated accordingly. Code is available at:
https://github.com/axeldavy/vnlne