Back to Search Start Over

Comparing Correspondences: Video Prediction with Correspondence-wise Losses

Authors :
Geng, Daniel
Hamilton, Max
Owens, Andrew
Publication Year :
2021

Abstract

Image prediction methods often struggle on tasks that require changing the positions of objects, such as video prediction, producing blurry images that average over the many positions that objects might occupy. In this paper, we propose a simple change to existing image similarity metrics that makes them more robust to positional errors: we match the images using optical flow, then measure the visual similarity of corresponding pixels. This change leads to crisper and more perceptually accurate predictions, and does not require modifications to the image prediction network. We apply our method to a variety of video prediction tasks, where it obtains strong performance with simple network architectures, and to the closely related task of video interpolation. Code and results are available at our webpage: https://dangeng.github.io/CorrWiseLosses<br />Comment: CVPR 2022 Camera Ready

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2104.09498
Document Type :
Working Paper