Recently, learned image compression schemes have achieved remarkable improvements in image fidelity (e.g., PSNR and MS-SSIM) compared to conventional hybrid image coding ones due to their high-efficiency non-linear transform, end-to-end optimization frameworks, etc. However, few of them take the Just Noticeable Difference (JND) characteristic of the Human Visual System (HVS) into account and optimize learned image compression towards perceptual quality. To address this issue, a JND-based perceptual quality loss is proposed. Considering that the amounts of distortion in the compressed image at different training epochs under different Quantization Parameters (QPs) are different, we develop a distortion-aware adjustor. After combining them together, we can better assign the distortion in the compressed image with the guidance of JND to preserve the high perceptual quality. All these designs enable the proposed method to be flexibly applied to various learned image compression schemes with high scalability and plug-and-play advantages. Experimental results on the Kodak dataset demonstrate that the proposed method has led to better perceptual quality than the baseline model under the same bit rate.
翻译:最近,与常规混合图像编码相比,学习的图像压缩计划(如PSNR和MS-SSIM)在图像忠诚方面有了显著改善,因为其效率高的非线性变换、端到端优化框架等等。然而,很少有人将人类视觉系统(HVS)的简单可感知差异特性考虑在内,并将学习的图像压缩优化优化到感知质量上。为解决这一问题,提出了基于JND的感知质量损失。考虑到不同量化参数(QPs)下不同培训时代压缩图像的扭曲数量不同,我们开发了一个扭曲感知调整器。在将它们合并后,我们可以更好地将压缩图像中的扭曲与JND的指导结合起来,以保持高感知质量。所有这些设计都使得拟议方法能够灵活地应用于各种学习的图像压缩计划,且具有高缩放性和插插功能优势。Kodak数据集的实验结果表明,拟议的方法比同一基准模型下的模型提高了感知质量。</s>