MISC: Ultra-Low Bitrate Image Semantic Compression Driven by Large Multimodal Model

IF 13.7
Chunyi Li;Guo Lu;Donghui Feng;Haoning Wu;Zicheng Zhang;Xiaohong Liu;Guangtao Zhai;Weisi Lin;Wenjun Zhang
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Abstract

With the evolution of storage and communication protocols, ultra-low bitrate image compression has become a highly demanding topic. However, all existing compression algorithms must sacrifice either consistency with the ground truth or perceptual quality at ultra-low bitrate. During recent years, the rapid development of the Large Multimodal Model (LMM) has made it possible to balance these two goals. To solve this problem, this paper proposes a method called Multimodal Image Semantic Compression (MISC), which consists of an LMM encoder for extracting the semantic information of the image, a map encoder to locate the region corresponding to the semantic, an image encoder generates an extremely compressed bitstream, and a decoder reconstructs the image based on the above information. Experimental results show that our proposed MISC is suitable for compressing both traditional Natural Sense Images (NSIs) and emerging AI-Generated Images (AIGIs) content. It can achieve optimal consistency and perception results while saving 50% bitrate, which has strong potential applications in the next generation of storage and communication. The code will be released on https://github.com/lcysyzxdxc/MISC.
MISC:大型多模态模型驱动的超低比特率图像语义压缩
随着存储和通信协议的不断发展,超低比特率图像压缩技术已成为一个备受关注的课题。然而,所有现有的压缩算法都必须在超低比特率下牺牲与真实的一致性或感知质量。近年来,大型多式联运模型(LMM)的快速发展使得平衡这两个目标成为可能。为了解决这一问题,本文提出了一种称为多模态图像语义压缩(Multimodal Image Semantic Compression, MISC)的方法,该方法由提取图像语义信息的LMM编码器、定位语义对应区域的map编码器、生成极度压缩的比特流的图像编码器以及基于上述信息重构图像的解码器组成。实验结果表明,我们提出的MISC既适用于传统的自然感知图像(nsi),也适用于新兴的人工智能生成图像(AIGIs)内容。它可以在节省50%比特率的同时获得最佳的一致性和感知结果,在下一代存储和通信中具有很强的应用潜力。代码将在https://github.com/lcysyzxdxc/MISC上发布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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