JPEG AI Image Compression Visual Artifacts: Detection Methods and Dataset
November 11, 2024 Β· Declared Dead Β· π arXiv.org
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Authors
Daria Tsereh, Mark Mirgaleev, Ivan Molodetskikh, Roman Kazantsev, Dmitriy Vatolin
arXiv ID
2411.06810
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.CV,
cs.MM
Citations
6
Venue
arXiv.org
Last Checked
4 months ago
Abstract
Learning-based image compression methods have improved in recent years and started to outperform traditional codecs. However, neural-network approaches can unexpectedly introduce visual artifacts in some images. We therefore propose methods to separately detect three types of artifacts (texture and boundary degradation, color change, and text corruption), to localize the affected regions, and to quantify the artifact strength. We consider only those regions that exhibit distortion due solely to the neural compression but that a traditional codec recovers successfully at a comparable bitrate. We employed our methods to collect artifacts for the JPEG AI verification model with respect to HM-18.0, the H.265 reference software. We processed about 350,000 unique images from the Open Images dataset using different compression-quality parameters; the result is a dataset of 46,440 artifacts validated through crowd-sourced subjective assessment. Our proposed dataset and methods are valuable for testing neural-network-based image codecs, identifying bugs in these codecs, and enhancing their performance. We make source code of the methods and the dataset publicly available.
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