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[ICML2024] MMT-Bench: A Comprehensive Multimodal Benchmark for Evaluating Large Vision-Language Models Towards Multitask AGI

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Opencompass VLMEevalKit supports MMT-Bench now! We strongly recommend using VLMEevalKit for its useful features and ready-to-use LVLM implementations.

MMT-Bench

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This repository is the official implementation of MMT-Bench.

MMT-Bench: A Multimodal MultiTask Benchmark for Comprehensive Evaluation of Large Vision-Language Models
Kaining Ying*, Fanqing Meng*, Jin Wang*, Zhiqian Li, Han Lin, Yue Yang, Hao Zhang, Wenbo Zhang, Yuqi Lin, Shuo Liu, jiayi lei, Quanfeng Lu, Peng Gao, Runjian Chen, Peng Xu, Renrui Zhang, Haozhe Zhang, Yali Wang, Yu Qiao, Ping Luo, Kaipeng Zhang#, Wenqi Shao#
* KY, FM and JW contribute equally.
# WS (shaowenqi@pjlab.org.cn) and KZ (zhangkaipeng@pjlab.org.cn) are correponding authors.

💡 News

  • 2024/07/18: We release the Leaderboard of VAL split. Download dataset here
  • 2024/06/25: We release the ALL split and VAL split.
  • 2024/06/25: The evaluation of ALL split is host on the EvalAI.
  • 2024/06/17: Opencompass VLMEevalKit supports MMT-Bench now! We strongly recommend using VLMEevalKit for its useful features and ready-to-use LVLM implementations.
  • 2024/05/01: MMT-Bench is accepted by ICML 2024. See you in Vienna! 🇦🇹🇦🇹🇦🇹
  • 2024/04/26: We release the evaluation code and the VAL split.
  • 2024/04/24: The technical report of MMT-Bench is released! And check our project page!

Introduction

MMT-Bench is a comprehensive benchmark designed to assess LVLMs across massive multimodal tasks requiring expert knowledge and deliberate visual recognition, localization, reasoning, and planning. MMT-Bench comprises 31, 325 meticulously curated multi-choice visual questions from various multimodal scenarios such as vehicle driving and embodied navigation, covering 32 core meta-tasks and 162 subtasks in multimodal understanding. overview

Evaluation Results Overview

  • The closed-source proprietary model GPT-4o from OpenAI has taken a leading position in MMT-Bench, surpassing other models such as InternVL-chat, QWen-VL-Plus, GPT-4V, and GeminiProVision. Note that the open-source models InternVL-chat and QwenVL-Max closely follow GPT-4o. overview

  • GPT-4o performs well in visual recognition and captioning and improves a lot in visual perception compared with GPT-4V (20231106 & 20240409). overview

🏆 Leaderboard

Val Set

Rank Model Score
1 InternVL2-40B 66.9
2 GPT4o 65.4
3 GeminiPro1-5 64.5
4 GPT4V-20240409-HIGH 64.3
4 InternVL-Chat-V1-2 64.3
6 Claude3-Opus 62.5
7 InternVL2-26B 60.6
8 LLavA-next-Yi-34B 60.4
9 InternVL2-8B 60.0
10 QwenVLMax 59.7
11 GeminiProVision 59.1
12 Mini-InternVL-Chat-4B-V1-5 58.4
13 XComposer2 56.3
14 Yi-VL-6B 54.7
15 Phi-3-Vision 54.5
15 TransCore-M 54.5
17 deepseek-vl-7B 54.0
17 Yi-VL-34B 54.0
19 LLavA-internlm2-7B 53.4
19 Monkey-Chat 53.4
21 LLavA-next-vicuna-13B 52.4
22 LLavA-v1.5-13B 52.1
23 sharegpt4v-7B 51.6
24 LLavA-v1.5-13B-xtuner 50.7
25 mPLUG-Owl2 50.5
26 LLavA-next-vicuna-7B 50.4
27 LLavA-v1.5-7B 49.6
28 LLavA-v1.5-7B-xtuner 49.3
29 LLavA-internlm-7B 48.3
30 Qwen-Chat 47.9
30 sharecaptioner 47.9

Full Set

Rank Model Score
1 GPT4o 65.5
2 InternVL-Chat-v1.2-34B 63.4
3 QwenVLMax 62.4
4 Qwen-VL-Plus 62.3
5 GeminiProVision 61.6
6 GPT4V_20240409 61.1
7 LLaVA-NEXT-34B 60.8
8 XComposer2 55.7
9 BLIP2 54.8
10 GPT4V_20231106 54.7
11 Yi-VL-34B 54.2
12 Monkey-Chat 53.4
13 DeepSeek-VL-7B 53.2
14 Yi-VL-6B 53.2
15 LLaVA-NEXT-13B 53.0
16 TransCore-M 52.7
17 QWen-VL-Chat 52.5
18 Claude3V_Haiku 52.2
19 XComposer 52.1
20 mPLUG-Owl2 52.0
21 RBDash-v1-13B 51.8
22 LLaVA-v1.5-13B 51.7
23 CogVLM-Chat 51.6
24 ShareGPT4V-7B 51.5
25 LLaVA-NEXT-7B 51.1
26 LLaVA-v1.5-13B-XTuner 51.1
27 LLaVA-InternLM2-7B 50.8
28 LLaVA-v1.5-7B-XTuner 50.2
29 SharedCaptioner 49.9
30 LLaVA-InternLM-7B 49.7
31 LLaVA-v1.5-7B 49.5
32 LLaMA-Adapter-v2-7B 40.4
33 VisualGLM-6B 38.6
34 Frequency Guess 31.7
35 Random Guess 28.5

🚀 Quick Start

Please refer to this to quick start.

💐 Acknowledgement

We expressed sincerely gratitude for the projects listed following:

  • VLMEvalKit provides useful out-of-box tools and implements many adavanced LVLMs. Thanks for their selfless dedication.

🖊️ Citation

If you feel MMT-Bench useful in your project or research, please kindly use the following BibTeX entry to cite our paper. Thanks!

@misc{mmtbench,
    title={MMT-Bench: A Comprehensive Multimodal Benchmark for Evaluating Large Vision-Language Models Towards Multitask AGI}, 
    author={Kaining Ying and Fanqing Meng and Jin Wang and Zhiqian Li and Han Lin and Yue Yang and Hao Zhang and Wenbo Zhang and Yuqi Lin and Shuo Liu and Jiayi Lei and Quanfeng Lu and Runjian Chen and Peng Xu and Renrui Zhang and Haozhe Zhang and Peng Gao and Yali Wang and Yu Qiao and Ping Luo and Kaipeng Zhang and Wenqi Shao},
    year={2024},
    eprint={2404.16006},
    archivePrefix={arXiv},
    primaryClass={cs.CV}
}

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