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Autores principales: Liu, Jinming, Jia, Zhaoyang, Li, Jiahao, Li, Bin, Jin, Xin, Zeng, Wenjun, Lu, Yan
Formato: Preprint
Publicado: 2025
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Acceso en línea:https://arxiv.org/abs/2509.24258
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author Liu, Jinming
Jia, Zhaoyang
Li, Jiahao
Li, Bin
Jin, Xin
Zeng, Wenjun
Lu, Yan
author_facet Liu, Jinming
Jia, Zhaoyang
Li, Jiahao
Li, Bin
Jin, Xin
Zeng, Wenjun
Lu, Yan
contents The increasing deployment of powerful Multimodal Large Language Models (MLLMs), typically hosted on cloud platforms, urgently requires effective compression techniques to efficiently transmit signal inputs (e.g., images, videos) from edge devices with minimal bandwidth usage. However, conventional image codecs are optimized for fidelity to serve the Human Visual System (HVS) and ill-suited for MLLMs, in which diverse downstream tasks are jointly considered. In this paper, we first systematically analyze the impact of compression artifacts on several mainstream MLLMs. We find that: Compression distortion unevenly impacts different-level image features, leading to varying effects on MLLMs' downstream tasks depending on their feature-level reliance. Motivated by this discovery, we propose an image Codec TAilored to MLLMs (CoTAM) designed to adaptively protect multi-level features and suit different demands of downstream tasks. The encoder leverages CLIP's shallow-layer attention to generate an importance map for bit allocation, preserving critical semantic regions. Concurrently, the decoder integrates a lightweight adapter with a multi-level loss function to ensure the faithful reconstruction both of low-level details and high-level semantic context for robust synthesis of cross-level features. Extensive experiments validate that our method achieves up to 35.99\% bitrate saving while maintaining the same performance on the MLLM tasks, outperforming previous SOTA neural codecs.
format Preprint
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institution arXiv
publishDate 2025
record_format arxiv
spellingShingle When MLLMs Meet Compression Distortion: A Coding Paradigm Tailored to MLLMs
Liu, Jinming
Jia, Zhaoyang
Li, Jiahao
Li, Bin
Jin, Xin
Zeng, Wenjun
Lu, Yan
Computer Vision and Pattern Recognition
The increasing deployment of powerful Multimodal Large Language Models (MLLMs), typically hosted on cloud platforms, urgently requires effective compression techniques to efficiently transmit signal inputs (e.g., images, videos) from edge devices with minimal bandwidth usage. However, conventional image codecs are optimized for fidelity to serve the Human Visual System (HVS) and ill-suited for MLLMs, in which diverse downstream tasks are jointly considered. In this paper, we first systematically analyze the impact of compression artifacts on several mainstream MLLMs. We find that: Compression distortion unevenly impacts different-level image features, leading to varying effects on MLLMs' downstream tasks depending on their feature-level reliance. Motivated by this discovery, we propose an image Codec TAilored to MLLMs (CoTAM) designed to adaptively protect multi-level features and suit different demands of downstream tasks. The encoder leverages CLIP's shallow-layer attention to generate an importance map for bit allocation, preserving critical semantic regions. Concurrently, the decoder integrates a lightweight adapter with a multi-level loss function to ensure the faithful reconstruction both of low-level details and high-level semantic context for robust synthesis of cross-level features. Extensive experiments validate that our method achieves up to 35.99\% bitrate saving while maintaining the same performance on the MLLM tasks, outperforming previous SOTA neural codecs.
title When MLLMs Meet Compression Distortion: A Coding Paradigm Tailored to MLLMs
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2509.24258