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Main Authors: Sun, Yu-Han, Lee, Chiang Lo-Hsuan, Chang, Tian-Sheuan
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2312.09799
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author Sun, Yu-Han
Lee, Chiang Lo-Hsuan
Chang, Tian-Sheuan
author_facet Sun, Yu-Han
Lee, Chiang Lo-Hsuan
Chang, Tian-Sheuan
contents Image prefiltering with just noticeable distortion (JND) improves coding efficiency in a visual lossless way by filtering the perceptually redundant information prior to compression. However, real JND cannot be well modeled with inaccurate masking equations in traditional approaches or image-level subject tests in deep learning approaches. Thus, this paper proposes a fine-grained JND prefiltering dataset guided by image quality assessment for accurate block-level JND modeling. The dataset is constructed from decoded images to include coding effects and is also perceptually enhanced with block overlap and edge preservation. Furthermore, based on this dataset, we propose a lightweight JND prefiltering network, IQNet, which can be applied directly to different quantization cases with the same model and only needs 3K parameters. The experimental results show that the proposed approach to Versatile Video Coding could yield maximum/average bitrate savings of 41\%/15\% and 53\%/19\% for all-intra and low-delay P configurations, respectively, with negligible subjective quality loss. Our method demonstrates higher perceptual quality and a model size that is an order of magnitude smaller than previous deep learning methods.
format Preprint
id arxiv_https___arxiv_org_abs_2312_09799
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle IQNet: Image Quality Assessment Guided Just Noticeable Difference Prefiltering For Versatile Video Coding
Sun, Yu-Han
Lee, Chiang Lo-Hsuan
Chang, Tian-Sheuan
Image and Video Processing
Artificial Intelligence
Computer Vision and Pattern Recognition
Image prefiltering with just noticeable distortion (JND) improves coding efficiency in a visual lossless way by filtering the perceptually redundant information prior to compression. However, real JND cannot be well modeled with inaccurate masking equations in traditional approaches or image-level subject tests in deep learning approaches. Thus, this paper proposes a fine-grained JND prefiltering dataset guided by image quality assessment for accurate block-level JND modeling. The dataset is constructed from decoded images to include coding effects and is also perceptually enhanced with block overlap and edge preservation. Furthermore, based on this dataset, we propose a lightweight JND prefiltering network, IQNet, which can be applied directly to different quantization cases with the same model and only needs 3K parameters. The experimental results show that the proposed approach to Versatile Video Coding could yield maximum/average bitrate savings of 41\%/15\% and 53\%/19\% for all-intra and low-delay P configurations, respectively, with negligible subjective quality loss. Our method demonstrates higher perceptual quality and a model size that is an order of magnitude smaller than previous deep learning methods.
title IQNet: Image Quality Assessment Guided Just Noticeable Difference Prefiltering For Versatile Video Coding
topic Image and Video Processing
Artificial Intelligence
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2312.09799