Salvato in:
Dettagli Bibliografici
Autori principali: Zhang, Qi, Wang, Shanshe, Zhang, Xinfeng, Jia, Chuanmin, Wang, Zhao, Ma, Siwei, Gao, Wen
Natura: Preprint
Pubblicazione: 2022
Soggetti:
Accesso online:https://arxiv.org/abs/2211.06797
Tags: Aggiungi Tag
Nessun Tag, puoi essere il primo ad aggiungerne!!
_version_ 1866913189676974080
author Zhang, Qi
Wang, Shanshe
Zhang, Xinfeng
Jia, Chuanmin
Wang, Zhao
Ma, Siwei
Gao, Wen
author_facet Zhang, Qi
Wang, Shanshe
Zhang, Xinfeng
Jia, Chuanmin
Wang, Zhao
Ma, Siwei
Gao, Wen
contents Video Coding for Machines (VCM) aims to compress visual signals for machine analysis. However, existing methods only consider a few machines, neglecting the majority. Moreover, the machine's perceptual characteristics are not leveraged effectively, resulting in suboptimal compression efficiency. To overcome these limitations, this paper introduces Satisfied Machine Ratio (SMR), a metric that statistically evaluates the perceptual quality of compressed images and videos for machines by aggregating satisfaction scores from them. Each score is derived from machine perceptual differences between original and compressed images. Targeting image classification and object detection tasks, we build two representative machine libraries for SMR annotation and create a large-scale SMR dataset to facilitate SMR studies. We then propose an SMR prediction model based on the correlation between deep feature differences and SMR. Furthermore, we introduce an auxiliary task to increase the prediction accuracy by predicting the SMR difference between two images in different quality. Extensive experiments demonstrate that SMR models significantly improve compression performance for machines and exhibit robust generalizability on unseen machines, codecs, datasets, and frame types. SMR enables perceptual coding for machines and propels VCM from specificity to generality. Code is available at https://github.com/ywwynm/SMR.
format Preprint
id arxiv_https___arxiv_org_abs_2211_06797
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Perceptual Video Coding for Machines via Satisfied Machine Ratio Modeling
Zhang, Qi
Wang, Shanshe
Zhang, Xinfeng
Jia, Chuanmin
Wang, Zhao
Ma, Siwei
Gao, Wen
Computer Vision and Pattern Recognition
Video Coding for Machines (VCM) aims to compress visual signals for machine analysis. However, existing methods only consider a few machines, neglecting the majority. Moreover, the machine's perceptual characteristics are not leveraged effectively, resulting in suboptimal compression efficiency. To overcome these limitations, this paper introduces Satisfied Machine Ratio (SMR), a metric that statistically evaluates the perceptual quality of compressed images and videos for machines by aggregating satisfaction scores from them. Each score is derived from machine perceptual differences between original and compressed images. Targeting image classification and object detection tasks, we build two representative machine libraries for SMR annotation and create a large-scale SMR dataset to facilitate SMR studies. We then propose an SMR prediction model based on the correlation between deep feature differences and SMR. Furthermore, we introduce an auxiliary task to increase the prediction accuracy by predicting the SMR difference between two images in different quality. Extensive experiments demonstrate that SMR models significantly improve compression performance for machines and exhibit robust generalizability on unseen machines, codecs, datasets, and frame types. SMR enables perceptual coding for machines and propels VCM from specificity to generality. Code is available at https://github.com/ywwynm/SMR.
title Perceptual Video Coding for Machines via Satisfied Machine Ratio Modeling
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2211.06797