TCC-Bench: Benchmarking the Traditional Chinese Culture Understanding Capabilities of MLLMs
By: Pengju Xu , Yan Wang , Shuyuan Zhang and more
Potential Business Impact:
Helps AI understand Chinese culture in pictures.
Recent progress in Multimodal Large Language Models (MLLMs) have significantly enhanced the ability of artificial intelligence systems to understand and generate multimodal content. However, these models often exhibit limited effectiveness when applied to non-Western cultural contexts, which raises concerns about their wider applicability. To address this limitation, we propose the Traditional Chinese Culture understanding Benchmark (TCC-Bench), a bilingual (i.e., Chinese and English) Visual Question Answering (VQA) benchmark specifically designed for assessing the understanding of traditional Chinese culture by MLLMs. TCC-Bench comprises culturally rich and visually diverse data, incorporating images from museum artifacts, everyday life scenes, comics, and other culturally significant contexts. We adopt a semi-automated pipeline that utilizes GPT-4o in text-only mode to generate candidate questions, followed by human curation to ensure data quality and avoid potential data leakage. The benchmark also avoids language bias by preventing direct disclosure of cultural concepts within question texts. Experimental evaluations across a wide range of MLLMs demonstrate that current models still face significant challenges when reasoning about culturally grounded visual content. The results highlight the need for further research in developing culturally inclusive and context-aware multimodal systems. The code and data can be found at: https://tcc-bench.github.io/.
Similar Papers
VisTW: Benchmarking Vision-Language Models for Traditional Chinese in Taiwan
Computation and Language
Tests computers understanding Chinese pictures and words.
Multi-TW: Benchmarking Multimodal Models on Traditional Chinese Question Answering in Taiwan
Artificial Intelligence
Helps computers understand Chinese pictures, sounds, and words.
IndicVisionBench: Benchmarking Cultural and Multilingual Understanding in VLMs
CV and Pattern Recognition
Tests AI on Indian languages and culture.