University of Bristol
Deep learning methods are increasingly being applied in the optimisation of video compression algorithms and can achieve significantly enhanced coding gains, compared to conventional approaches. Such approaches often employ Convolutional Neural Networks (CNNs) which are trained on databases with relatively limited content coverage. In this work, a new extensive and representative video database, BVI-DVC is presented for training CNN-based video compression systems, with specific emphasis on machine learning tools that enhance conventional coding architectures, including spatial resolution and bit depth up-sampling, post-processing and in-loop filtering. BVI-DVC contains 800 sequences at various spatial resolutions from 270p to 2160p and has been evaluated on ten existing network architectures for four different coding tools. Experimental results show that this database produces significant improvements in terms of coding gains over three existing (commonly used) image/video training databases under the same training and evaluation configurations. The overall additional coding improvements by using the proposed database for all tested coding modules and CNN architectures are up to 10.3% based on the assessment of PSNR and 8.1% based on VMAF.
Download All videos from MS OneDrive. Please fill a simple registration form to get access. You will receive the download details in an email within 2 days after we receive the form. Please note the email may be in your Spam box.
[DOWNLOAD] all videos from University of Bristol Research Data Storage Facility. It is also required to fill a registration form, but it could take weeks to get access.
[README] before using the database and for copyright permissions.
If there is any issue regarding this database, please contact fan.zhang@bristol.ac.uk
@article{ma2021bvi, title={BVI-DVC: A training database for deep video compression}, author={Ma, Di and Zhang, Fan and Bull, David R}, journal={IEEE Transactions on Multimedia}, volume={24}, pages={3847--3858}, year={2021}, publisher={IEEE} }[paper]