论文标题
通过关节损失和残留压缩,学习的无损JPEG转码
Learned Lossless JPEG Transcoding via Joint Lossy and Residual Compression
论文作者
论文摘要
作为常用的图像压缩格式,JPEG已广泛应用于图像的传输和存储。为了进一步降低压缩成本,同时维持JPEG图像的质量,已经提出了无损的转码技术来重新压缩DCT域中的压缩JPEG图像。另一方面,以前的工作通常会降低DCT系数的冗余,并以缺乏概括能力和灵活性的手工制作方式优化熵编码的概率预测。为了应对上述挑战,我们提出了通过关节损失和残留压缩的学习无损JPEG转码框架。我们专注于DCT系数中存在的冗余,而不是直接优化熵估计。据我们所知,我们是第一个利用学习的端到端损失变换编码来减少紧凑型代表性域中DCT系数的冗余的人。我们还引入了无损转编码的残留压缩,在使用基于上下文的熵编码对其进行压缩之前,它会自适应地学习残留DCT系数的分布。我们提出的转码结构在JPEG图像的压缩中表现出显着的优势,这要归功于学习的有损转换编码和残留熵编码的协作。在多个数据集上进行的广泛实验表明,根据JPEG压缩,我们提出的框架平均可以节省约21.49%的位,这表现优于典型的无损失转码框架JPEG-XL的jpeg-XL 3.51%。
As a commonly-used image compression format, JPEG has been broadly applied in the transmission and storage of images. To further reduce the compression cost while maintaining the quality of JPEG images, lossless transcoding technology has been proposed to recompress the compressed JPEG image in the DCT domain. Previous works, on the other hand, typically reduce the redundancy of DCT coefficients and optimize the probability prediction of entropy coding in a hand-crafted manner that lacks generalization ability and flexibility. To tackle the above challenge, we propose the learned lossless JPEG transcoding framework via Joint Lossy and Residual Compression. Instead of directly optimizing the entropy estimation, we focus on the redundancy that exists in the DCT coefficients. To the best of our knowledge, we are the first to utilize the learned end-to-end lossy transform coding to reduce the redundancy of DCT coefficients in a compact representational domain. We also introduce residual compression for lossless transcoding, which adaptively learns the distribution of residual DCT coefficients before compressing them using context-based entropy coding. Our proposed transcoding architecture shows significant superiority in the compression of JPEG images thanks to the collaboration of learned lossy transform coding and residual entropy coding. Extensive experiments on multiple datasets have demonstrated that our proposed framework can achieve about 21.49% bits saving in average based on JPEG compression, which outperforms the typical lossless transcoding framework JPEG-XL by 3.51%.