# CVQA for VLMEvalKit - [Original dataset:](https://huggingface.co/datasets/afaji/cvqa) ported to [VLMEvalKit](https://github.com/open-compass/VLMEvalKit) - From the original authors: > CVQA is a culturally diverse multilingual VQA benchmark consisting of over 10,000 questions from 39 country-language pairs. The questions in CVQA are written in both the native languages and English, and are categorized into 10 diverse categories. ``` {'image': , 'ID': '5919991144272485961_0', 'Subset': "('Japanese', 'Japan')", 'Question': '写真に写っているキャラクターの名前は? ', 'Translated Question': 'What is the name of the object in the picture? ', 'Options': ['コスモ星丸', 'ミャクミャク', ' フリービー ', 'ハイバオ'], 'Translated Options': ['Cosmo Hoshimaru','MYAKU-MYAKU','Freebie ','Haibao'], 'Label': -1, 'Category': 'Objects / materials / clothing', 'Image Type': 'Self', 'Image Source': 'Self-open', 'License': 'CC BY-SA' } ``` - To support VLMEvalKit, two TSV files were created to represent the two versions of CVQA: 1. The localised **(LOC)** version. The questions and answer options are in the subset's original native language. For evaluating with multilingual LLMs. 2. The english **(ENG)** version. Questions and answers are asked in translated English, although the topics of the question involve cultures other than English. For evaluating on LLMs trained primarily on English. - TSV row data columns for **LOC** and **ENG** [VLMEvalKit](https://github.com/timothycdc/VLMEvalKit/blob/main/docs/en/Development.md): - index (int, based on dataset order. Does not follow CVQA ids since they are of type str) - image (base64) - question - A option - B option - C option - D option - l2-category (`Subset`) - split (always called `test`) ## Info - Proposed method of evaluation: - Prompt the model to answer only with the correct option letter (one of `[A,B,C,D]`) - Use regex or string search to locate the correct letter - Alternatively, use LLM-as-a-judge to identify the correct answer letter. Although, this is a bit of an overkill. - The original CVQA dataset numbers the options as `[0,1,2,3]`, however this has been changed to`[A,B,C,D]` to follow the VLMEvalKit standard. This shouldn't have much effect on performance.