HakushoBench provides 2,053 Japanese chart and table images from governmental white papers with QA pairs, showing open-weight VLMs reach only 58.6% accuracy versus higher proprietary performance.
JAMMEval: A Refined Collection of Japanese Benchmarks for Reliable VLM Evaluation
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Reliable evaluation is essential for the development of vision-language models (VLMs). However, Japanese VQA benchmarks have undergone far less iterative refinement than their English counterparts. As a result, many existing benchmarks contain issues such as ambiguous questions, incorrect answers, and instances that can be solved without visual grounding, undermining evaluation reliability and leading to misleading conclusions in model comparisons. To address these limitations, we introduce JAMMEval, a refined collection of Japanese benchmarks for reliable VLM evaluation. It is constructed by systematically refining seven existing Japanese benchmark datasets through two rounds of human annotation, improving both data quality and evaluation reliability. In our experiments, we evaluate open-weight and proprietary VLMs on JAMMEval and analyze the capabilities of recent models on Japanese VQA. We further demonstrate the effectiveness of our refinement by showing that the resulting benchmarks yield evaluation scores that better reflect model capability, exhibit lower run-to-run variance, and improve the ability to distinguish between models of different capability levels. We release our dataset and code to advance reliable evaluation of VLMs.
fields
cs.CV 1years
2026 1verdicts
ACCEPT 1representative citing papers
citing papers explorer
-
HakushoBench: A Japanese Chart and Table VQA Benchmark from Governmental White Papers
HakushoBench provides 2,053 Japanese chart and table images from governmental white papers with QA pairs, showing open-weight VLMs reach only 58.6% accuracy versus higher proprietary performance.