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Hauptverfasser: Xu, Mingjie, Chen, Jinpeng, Zhao, Yuzhi, Li, Jason Chun Lok, Qiu, Yue, Du, Zekang, Wu, Mengyang, Zhang, Pingping, Li, Kun, Yang, Hongzheng, Ma, Wenao, Wei, Jiaheng, Li, Qinbin, Liu, Kangcheng, Lei, Wenqiang
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2511.11438
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author Xu, Mingjie
Chen, Jinpeng
Zhao, Yuzhi
Li, Jason Chun Lok
Qiu, Yue
Du, Zekang
Wu, Mengyang
Zhang, Pingping
Li, Kun
Yang, Hongzheng
Ma, Wenao
Wei, Jiaheng
Li, Qinbin
Liu, Kangcheng
Lei, Wenqiang
author_facet Xu, Mingjie
Chen, Jinpeng
Zhao, Yuzhi
Li, Jason Chun Lok
Qiu, Yue
Du, Zekang
Wu, Mengyang
Zhang, Pingping
Li, Kun
Yang, Hongzheng
Ma, Wenao
Wei, Jiaheng
Li, Qinbin
Liu, Kangcheng
Lei, Wenqiang
contents Multimodal large language models (MLLMs) have enabled a wide range of advanced vision-language applications, including fine-grained object recognition and contextual understanding. When querying specific regions or objects in an image, human users naturally use "visual prompts" (VPs), such as bounding boxes, to provide reference. However, no existing benchmark systematically evaluates the ability of MLLMs to interpret such VPs. This gap leaves it unclear whether current MLLMs can effectively recognize VPs, an intuitive prompting method for humans, and use them to solve problems. To address this limitation, we introduce VP-Bench, a benchmark for assessing MLLMs' capability in VP perception and utilization. VP-Bench employs a two-stage evaluation framework: Stage 1 examines models' ability to perceive VPs in natural scenes, using 30k visualized prompts spanning eight shapes and 355 attribute combinations. Stage 2 investigates the impact of VPs on downstream tasks, measuring their effectiveness in real-world problem-solving scenarios. Using VP-Bench, we evaluate 28 MLLMs, including proprietary systems (e.g., GPT-4o) and open-source models (e.g., InternVL3 and Qwen2.5-VL), and provide a comprehensive analysis of factors that affect VP understanding, such as variations in VP attributes, question arrangement, and model scale. VP-Bench establishes a new reference framework for studying how MLLMs comprehend and resolve grounded referring questions.
format Preprint
id arxiv_https___arxiv_org_abs_2511_11438
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle VP-Bench: A Comprehensive Benchmark for Visual Prompting in Multimodal Large Language Models
Xu, Mingjie
Chen, Jinpeng
Zhao, Yuzhi
Li, Jason Chun Lok
Qiu, Yue
Du, Zekang
Wu, Mengyang
Zhang, Pingping
Li, Kun
Yang, Hongzheng
Ma, Wenao
Wei, Jiaheng
Li, Qinbin
Liu, Kangcheng
Lei, Wenqiang
Computer Vision and Pattern Recognition
Multimodal large language models (MLLMs) have enabled a wide range of advanced vision-language applications, including fine-grained object recognition and contextual understanding. When querying specific regions or objects in an image, human users naturally use "visual prompts" (VPs), such as bounding boxes, to provide reference. However, no existing benchmark systematically evaluates the ability of MLLMs to interpret such VPs. This gap leaves it unclear whether current MLLMs can effectively recognize VPs, an intuitive prompting method for humans, and use them to solve problems. To address this limitation, we introduce VP-Bench, a benchmark for assessing MLLMs' capability in VP perception and utilization. VP-Bench employs a two-stage evaluation framework: Stage 1 examines models' ability to perceive VPs in natural scenes, using 30k visualized prompts spanning eight shapes and 355 attribute combinations. Stage 2 investigates the impact of VPs on downstream tasks, measuring their effectiveness in real-world problem-solving scenarios. Using VP-Bench, we evaluate 28 MLLMs, including proprietary systems (e.g., GPT-4o) and open-source models (e.g., InternVL3 and Qwen2.5-VL), and provide a comprehensive analysis of factors that affect VP understanding, such as variations in VP attributes, question arrangement, and model scale. VP-Bench establishes a new reference framework for studying how MLLMs comprehend and resolve grounded referring questions.
title VP-Bench: A Comprehensive Benchmark for Visual Prompting in Multimodal Large Language Models
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2511.11438