Guided Diffusion for the Extension of Machine Vision to Human Visual Perception
Journal:
arXiv
Published Date:
Mar 23, 2025
Abstract
Image compression technology eliminates redundant information to enable
efficient transmission and storage of images, serving both machine vision and
human visual perception. For years, image coding focused on human perception
has been well-studied, leading to the development of various image compression
standards. On the other hand, with the rapid advancements in image recognition
models, image compression for AI tasks, known as Image Coding for Machines
(ICM), has gained significant importance. Therefore, scalable image coding
techniques that address the needs of both machines and humans have become a key
area of interest. Additionally, there is increasing demand for research
applying the diffusion model, which can generate human-viewable images from a
small amount of data to image compression methods for human vision. Image
compression methods that use diffusion models can partially reconstruct the
target image by guiding the generation process with a small amount of
conditioning information. Inspired by the diffusion model's potential, we
propose a method for extending machine vision to human visual perception using
guided diffusion. Utilizing the diffusion model guided by the output of the ICM
method, we generate images for human perception from random noise. Guided
diffusion acts as a bridge between machine vision and human vision, enabling
transitions between them without any additional bitrate overhead. The generated
images then evaluated based on bitrate and image quality, and we compare their
compression performance with other scalable image coding methods for humans and
machines.