CVAIDec 5, 2024

LL-ICM: Image Compression for Low-level Machine Vision via Large Vision-Language Model

arXiv:2412.03841v11 citationsh-index: 1
Originality Incremental advance
AI Analysis

This addresses the need for efficient image compression tailored to low-level vision tasks like image restoration, which is incremental as it extends existing ICM approaches to new task types.

The paper tackles the problem of image compression for low-level machine vision tasks, proposing LL-ICM, a framework that jointly optimizes compression and low-level tasks, achieving a 22.65% BD-rate reduction over state-of-the-art methods.

Image Compression for Machines (ICM) aims to compress images for machine vision tasks rather than human viewing. Current works predominantly concentrate on high-level tasks like object detection and semantic segmentation. However, the quality of original images is usually not guaranteed in the real world, leading to even worse perceptual quality or downstream task performance after compression. Low-level (LL) machine vision models, like image restoration models, can help improve such quality, and thereby their compression requirements should also be considered. In this paper, we propose a pioneered ICM framework for LL machine vision tasks, namely LL-ICM. By jointly optimizing compression and LL tasks, the proposed LL-ICM not only enriches its encoding ability in generalizing to versatile LL tasks but also optimizes the processing ability of down-stream LL task models, achieving mutual adaptation for image codecs and LL task models. Furthermore, we integrate large-scale vision-language models into the LL-ICM framework to generate more universal and distortion-robust feature embeddings for LL vision tasks. Therefore, one LL-ICM codec can generalize to multiple tasks. We establish a solid benchmark to evaluate LL-ICM, which includes extensive objective experiments by using both full and no-reference image quality assessments. Experimental results show that LL-ICM can achieve 22.65% BD-rate reductions over the state-of-the-art methods.

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