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Heron-Bench: A Benchmark for Evaluating Japanese Vision Language Models


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The Heron-Bench is a novel benchmark for assessing the Japanese language capabilities of Vision Language Models (VLMs). It consists of a diverse set of image-question-answer pairs tailored to the Japanese context, enabling a comprehensive and culturally aware evaluation of VLMs.
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The Heron-Bench is a new benchmark introduced in this work for evaluating the Japanese language capabilities of Vision Language Models (VLMs). It consists of 102 image-question-answer pairs covering a variety of topics relevant to the Japanese context, including anime, art, culture, food, landscape, landmarks, and transportation.

The benchmark was constructed by first collecting 21 public domain or CC BY 2.0 licensed images related to Japan. For each image, the authors set up three categories of questions - Conversation, Detail, and Complex. They then manually described the information about each image in detail as context, and used the GPT-4 API to generate model answers for the questions based on the context.

To evaluate VLMs, the images and questions are input into the models, and the generated answers are scored by the GPT-4 API. The scores are calculated as the ratio of the average score of the VLM's answers to the average score of the GPT-4 model answers, based on how well they match the context.

The authors also introduce a baseline Japanese VLM called Heron GIT, which is trained using the visual instruction tuning technique and Japanese image-text pairs. The performance of Heron GIT and other open and closed VLMs are evaluated on the Heron-Bench, as well as the Japanese-translated versions of the LLaVA-Bench (COCO) and LLaVA-Bench (In-the-Wild) datasets.

The results show that closed models like GPT-4V consistently achieve high scores, while open models exhibit varying strengths and weaknesses across different subcategories. The Heron-Bench reveals the capability gap between strong closed models and the baseline Japanese VLM, providing valuable insights for future research in this domain.

The authors release the Heron-Bench dataset and training code to facilitate further developments in Japanese VLM research.

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Statisztikák
The Heron-Bench dataset consists of 102 image-question-answer pairs. The images cover 7 subcategories: anime, art, culture, food, landscape, landmark, and transportation. Each image has 3 types of questions: Conversation, Detail, and Complex.
Idézetek
"The Japanese Heron-Bench consists of a variety of image-question answer pairs tailored to the Japanese context." "We release the benchmark dataset and training code to facilitate further developments in Japanese VLM research."

Főbb Kivonatok

by Yuichi Inoue... : arxiv.org 04-12-2024

https://arxiv.org/pdf/2404.07824.pdf
Heron-Bench

Mélyebb kérdések

How can the Heron-Bench be extended to evaluate the safety and ethical aspects of Japanese VLMs?

To extend the Heron-Bench for evaluating the safety and ethical aspects of Japanese VLMs, additional evaluation metrics and criteria need to be incorporated into the benchmark. This can involve assessing the models for misinformation, bias, hatefulness, or toxic content generation. Implementing checks for these factors can help ensure that the VLMs are not inadvertently promoting harmful or inaccurate information. Furthermore, incorporating guidelines for ethical AI practices, such as fairness, transparency, and accountability, into the evaluation process can provide a comprehensive assessment of the models' ethical implications. By integrating these considerations into the Heron-Bench, researchers and developers can gain insights into the safety and ethical performance of Japanese VLMs.

What are the potential biases and limitations in the GPT-4 scoring used for the Heron-Bench, and how can they be addressed?

One potential bias in the GPT-4 scoring for the Heron-Bench could be the model's inherent biases in language understanding and generation, which may impact the accuracy and relevance of the answers provided. Additionally, the variability in responses generated by GPT-4 can introduce inconsistency in scoring, leading to potential discrepancies in the evaluation results. To address these biases and limitations, it is essential to implement multiple evaluations using GPT-4 with different configurations to mitigate the variability in responses. Moreover, incorporating human oversight and validation in the scoring process can help ensure the accuracy and fairness of the evaluation results. By acknowledging and actively addressing these biases and limitations, the Heron-Bench can enhance the reliability and robustness of the evaluation process for Japanese VLMs.

How can the Heron-Bench be leveraged to drive the development of more culturally-aware and inclusive multimodal AI systems for Japan and other non-English speaking regions?

The Heron-Bench can serve as a catalyst for the development of culturally-aware and inclusive multimodal AI systems by providing a tailored evaluation framework that considers the linguistic and cultural nuances specific to Japan and other non-English speaking regions. By incorporating image-question-answer pairs relevant to the Japanese context, the benchmark can facilitate the training and evaluation of VLMs that are more attuned to the cultural and linguistic diversity of these regions. Researchers and developers can leverage the insights gained from the Heron-Bench to refine their models, improve language understanding, and enhance the representation of diverse cultural perspectives in AI systems. Additionally, sharing the benchmark dataset and evaluation code can foster collaboration and knowledge exchange within the research community, driving innovation and advancements in the development of culturally-aware and inclusive multimodal AI systems.
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