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Autori principali: Zhang, Qi, Wang, Shanshe, Zhang, Xinfeng, Ma, Siwei, Pan, Jingshan, Gao, Wen
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2412.17477
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author Zhang, Qi
Wang, Shanshe
Zhang, Xinfeng
Ma, Siwei
Pan, Jingshan
Gao, Wen
author_facet Zhang, Qi
Wang, Shanshe
Zhang, Xinfeng
Ma, Siwei
Pan, Jingshan
Gao, Wen
contents Nowadays, high-quality images are pursued by both humans for better viewing experience and by machines for more accurate visual analysis. However, images are usually compressed before being consumed, decreasing their quality. It is meaningful to predict the perceptual quality of compressed images for both humans and machines, which guides the optimization for compression. In this paper, we propose a unified approach to address this. Specifically, we create a deep learning-based model to predict Satisfied User Ratio (SUR) and Satisfied Machine Ratio (SMR) of compressed images simultaneously. We first pre-train a feature extractor network on a large-scale SMR-annotated dataset with human perception-related quality labels generated by diverse image quality models, which simulates the acquisition of SUR labels. Then, we propose an MLP-Mixer-based network to predict SUR and SMR by leveraging and fusing the extracted multi-layer features. We introduce a Difference Feature Residual Learning (DFRL) module to learn more discriminative difference features. We further use a Multi-Head Attention Aggregation and Pooling (MHAAP) layer to aggregate difference features and reduce their redundancy. Experimental results indicate that the proposed model significantly outperforms state-of-the-art SUR and SMR prediction methods. Moreover, our joint learning scheme of human and machine perceptual quality prediction tasks is effective at improving the performance of both.
format Preprint
id arxiv_https___arxiv_org_abs_2412_17477
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Predicting Satisfied User and Machine Ratio for Compressed Images: A Unified Approach
Zhang, Qi
Wang, Shanshe
Zhang, Xinfeng
Ma, Siwei
Pan, Jingshan
Gao, Wen
Computer Vision and Pattern Recognition
Multimedia
Nowadays, high-quality images are pursued by both humans for better viewing experience and by machines for more accurate visual analysis. However, images are usually compressed before being consumed, decreasing their quality. It is meaningful to predict the perceptual quality of compressed images for both humans and machines, which guides the optimization for compression. In this paper, we propose a unified approach to address this. Specifically, we create a deep learning-based model to predict Satisfied User Ratio (SUR) and Satisfied Machine Ratio (SMR) of compressed images simultaneously. We first pre-train a feature extractor network on a large-scale SMR-annotated dataset with human perception-related quality labels generated by diverse image quality models, which simulates the acquisition of SUR labels. Then, we propose an MLP-Mixer-based network to predict SUR and SMR by leveraging and fusing the extracted multi-layer features. We introduce a Difference Feature Residual Learning (DFRL) module to learn more discriminative difference features. We further use a Multi-Head Attention Aggregation and Pooling (MHAAP) layer to aggregate difference features and reduce their redundancy. Experimental results indicate that the proposed model significantly outperforms state-of-the-art SUR and SMR prediction methods. Moreover, our joint learning scheme of human and machine perceptual quality prediction tasks is effective at improving the performance of both.
title Predicting Satisfied User and Machine Ratio for Compressed Images: A Unified Approach
topic Computer Vision and Pattern Recognition
Multimedia
url https://arxiv.org/abs/2412.17477