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Main Authors: Qian, Chen, Yu, Xinran, Huang, Zewen, Li, Danyang, Ma, Qiang, Dang, Fan, Ding, Xuan, Shang, Guangyong, Yang, Zheng
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2508.12638
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author Qian, Chen
Yu, Xinran
Huang, Zewen
Li, Danyang
Ma, Qiang
Dang, Fan
Ding, Xuan
Shang, Guangyong
Yang, Zheng
author_facet Qian, Chen
Yu, Xinran
Huang, Zewen
Li, Danyang
Ma, Qiang
Dang, Fan
Ding, Xuan
Shang, Guangyong
Yang, Zheng
contents Vision-Language Models (VLMs) are increasingly deployed in real-time applications such as autonomous driving and human-computer interaction, which demand fast and reliable responses based on accurate perception. To meet these requirements, existing systems commonly employ cloud-edge collaborative architectures, such as partitioned Large Vision-Language Models (LVLMs) or task offloading strategies between Large and Small Vision-Language Models (SVLMs). However, these methods fail to accommodate cloud latency fluctuations and overlook the full potential of delayed but accurate LVLM responses. In this work, we propose a novel cloud-edge collaborative paradigm for VLMs, termed Context Transfer, which treats the delayed outputs of LVLMs as historical context to provide real-time guidance for SVLMs inference. Based on this paradigm, we design edgeVLM, which incorporates both context replacement and visual focus modules to refine historical textual input and enhance visual grounding consistency. Extensive experiments on three real-time vision-lanuage reasoning tasks across four datasets demonstrate the effectiveness of the proposed framework. The new paradigm lays the groundwork for more effective and latency-aware collaboration strategies in future VLM systems.
format Preprint
id arxiv_https___arxiv_org_abs_2508_12638
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle edgeVLM: Cloud-edge Collaborative Real-time VLM based on Context Transfer
Qian, Chen
Yu, Xinran
Huang, Zewen
Li, Danyang
Ma, Qiang
Dang, Fan
Ding, Xuan
Shang, Guangyong
Yang, Zheng
Computer Vision and Pattern Recognition
Artificial Intelligence
Vision-Language Models (VLMs) are increasingly deployed in real-time applications such as autonomous driving and human-computer interaction, which demand fast and reliable responses based on accurate perception. To meet these requirements, existing systems commonly employ cloud-edge collaborative architectures, such as partitioned Large Vision-Language Models (LVLMs) or task offloading strategies between Large and Small Vision-Language Models (SVLMs). However, these methods fail to accommodate cloud latency fluctuations and overlook the full potential of delayed but accurate LVLM responses. In this work, we propose a novel cloud-edge collaborative paradigm for VLMs, termed Context Transfer, which treats the delayed outputs of LVLMs as historical context to provide real-time guidance for SVLMs inference. Based on this paradigm, we design edgeVLM, which incorporates both context replacement and visual focus modules to refine historical textual input and enhance visual grounding consistency. Extensive experiments on three real-time vision-lanuage reasoning tasks across four datasets demonstrate the effectiveness of the proposed framework. The new paradigm lays the groundwork for more effective and latency-aware collaboration strategies in future VLM systems.
title edgeVLM: Cloud-edge Collaborative Real-time VLM based on Context Transfer
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2508.12638