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TLIC: Learned Image Compression with ROI-Weighted Distortion and Bit Allocation
March 26, 2024, 4:49 a.m. | Wei Jiang, Yongqi Zhai, Hangyu Li, Ronggang Wang
cs.CV updates on arXiv.org arxiv.org
Abstract: This short paper describes our method for the track of image compression. To achieve better perceptual quality, we use the adversarial loss to generate realistic textures, use region of interest (ROI) mask to guide the bit allocation for different regions. Our Team name is TLIC.
abstract adversarial arxiv compression cs.cv eess.iv generate guide image loss paper quality roi team type
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