arXiv Analytics

Sign in

arXiv:2012.02228 [cs.CV]AbstractReferencesReviewsResources

EVRNet: Efficient Video Restoration on Edge Devices

Sachin Mehta, Amit Kumar, Fitsum Reda, Varun Nasery, Vikram Mulukutla, Rakesh Ranjan, Vikas Chandra

Published 2020-12-03Version 1

Video transmission applications (e.g., conferencing) are gaining momentum, especially in times of global health pandemic. Video signals are transmitted over lossy channels, resulting in low-quality received signals. To restore videos on recipient edge devices in real-time, we introduce an efficient video restoration network, EVRNet. EVRNet efficiently allocates parameters inside the network using alignment, differential, and fusion modules. With extensive experiments on video restoration tasks (deblocking, denoising, and super-resolution), we demonstrate that EVRNet delivers competitive performance to existing methods with significantly fewer parameters and MACs. For example, EVRNet has 260 times fewer parameters and 958 times fewer MACs than enhanced deformable convolution-based video restoration network (EDVR) for 4 times video super-resolution while its SSIM score is 0.018 less than EDVR. We also evaluated the performance of EVRNet under multiple distortions on unseen dataset to demonstrate its ability in modeling variable-length sequences under both camera and object motion.

Related articles: Most relevant | Search more
arXiv:2102.03456 [cs.CV] (Published 2021-02-06)
BinaryCoP: Binary Neural Network-based COVID-19 Face-Mask Wear and Positioning Predictor on Edge Devices
arXiv:2410.11650 [cs.CV] (Published 2024-10-15)
ED-ViT: Splitting Vision Transformer for Distributed Inference on Edge Devices
Xiang Liu et al.
arXiv:2304.06309 [cs.CV] (Published 2023-04-13)
Out-of-distribution Few-shot Learning For Edge Devices without Model Fine-tuning