Yicheng Qian


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2025

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RealBench: A Chinese Multi-image Understanding Benchmark Close to Real-world Scenarios
Fei Zhao | Chengqiang Lu | Yufan Shen | Qimeng Wang | Yicheng Qian | Haoxin Zhang | Yan Gao | Yiwu | Yao Hu | Zhen Wu | Shangyu Xing | Xinyu Dai
Findings of the Association for Computational Linguistics: EMNLP 2025

While various multimodal multi-image evaluation datasets have been emerged, but these datasets are primarily based on English, and there has yet to be a Chinese multi-image dataset. To fill this gap, we introduce RealBench, the first Chinese multimodal multi-image dataset, which contains 9393 samples and 69910 images. RealBench distinguishes itself by incorporating real user-generated content, ensuring high relevance to real-world applications. Additionally, the dataset covers a wide variety of scenes, image resolutions, and image structures, further increasing the difficulty of multi-image understanding. Ultimately, we conduct a comprehensive evaluation of RealBench using 21 multimodal LLMs of different sizes, including closed-source models that support multi-image inputs as well as open-source visual and video models. The experimental results indicate that even the most powerful closed-source models still face challenges when handling multi-image Chinese scenarios. Moreover, there remains a noticeable performance gap of around 71.8% on average between open-source visual/video models and closed-source models. These results show that RealBench provides an important research foundation for further exploring multi-image understanding capabilities in the Chinese context. Our datasets will be publicly available.