Affiliation:
1. Division of Software Yonsei University Wonju Republic of Korea
2. Media Research Division Electronics and Telecommunications Research Institute Deajeon Republic of Korea
3. Department of Computer Engineering Dong‐A University Busan Republic of Korea
Abstract
AbstractA conventional codec aims to increase the compression efficiency for transmission and storage while maintaining video quality. However, as the number of platforms using machine vision rapidly increases, a codec that increases the compression efficiency and maintains the accuracy of machine vision tasks must be devised. Hence, the Moving Picture Experts Group created a standardization process for video coding for machines (VCM) to reduce bitrates while maintaining the accuracy of machine vision tasks. In particular, in‐loop filters have been developed for improving the subjective quality and machine vision task accuracy. However, the high computational complexity of in‐loop filters limits the development of a high‐performance VCM architecture. We analyze the effect of an in‐loop filter on the VCM performance and propose a suboptimal VCM method based on the selective activation of in‐loop filters. The proposed method reduces the computation time for video coding by approximately 5% when using the enhanced compression model and 2% when employing a Versatile Video Coding test model while maintaining the machine vision accuracy and compression efficiency of the VCM architecture.
Funder
National Research Foundation of Korea
Reference24 articles.
1. Standardization trends in video coding for machines;Kwon H.;Electron. Telecommun. Trends,2020
2. Video Coding for Machines: A Paradigm of Collaborative Compression and Intelligent Analytics
3. Towards Coding for Human and Machine Vision: Scalable Face Image Coding
4. Y.Zhang M.Rafie S.Liu andC.Hollmann BoG report on video coding for machines M58352 ISO/IEC JTC1/SC29/WG2 2021.
5. Y.Zhang C.Rosewarne S.Liu andC.Hollmann Call for evidence on video coding for machines N00215 ISO/IEC JTC1/SC29/WG2 2022.