English

PhyBench: A Physical Commonsense Benchmark for Evaluating Text-to-Image Models

Computer Vision and Pattern Recognition 2024-09-24 v3

Abstract

Text-to-image (T2I) models have made substantial progress in generating images from textual prompts. However, they frequently fail to produce images consistent with physical commonsense, a vital capability for applications in world simulation and everyday tasks. Current T2I evaluation benchmarks focus on metrics such as accuracy, bias, and safety, neglecting the evaluation of models' internal knowledge, particularly physical commonsense. To address this issue, we introduce PhyBench, a comprehensive T2I evaluation dataset comprising 700 prompts across 4 primary categories: mechanics, optics, thermodynamics, and material properties, encompassing 31 distinct physical scenarios. We assess 6 prominent T2I models, including proprietary models DALLE3 and Gemini, and demonstrate that incorporating physical principles into prompts enhances the models' ability to generate physically accurate images. Our findings reveal that: (1) even advanced models frequently err in various physical scenarios, except for optics; (2) GPT-4o, with item-specific scoring instructions, effectively evaluates the models' understanding of physical commonsense, closely aligning with human assessments; and (3) current T2I models are primarily focused on text-to-image translation, lacking profound reasoning regarding physical commonsense. We advocate for increased attention to the inherent knowledge within T2I models, beyond their utility as mere image generation tools. The data will be available soon.

Keywords

Cite

@article{arxiv.2406.11802,
  title  = {PhyBench: A Physical Commonsense Benchmark for Evaluating Text-to-Image Models},
  author = {Fanqing Meng and Wenqi Shao and Lixin Luo and Yahong Wang and Yiran Chen and Quanfeng Lu and Yue Yang and Tianshuo Yang and Kaipeng Zhang and Yu Qiao and Ping Luo},
  journal= {arXiv preprint arXiv:2406.11802},
  year   = {2024}
}

Comments

Some low-quality data and comments may mislead readers to understand the paper. We are working hard to correct these problems and resubmit the paper after making the necessary revisions

R2 v1 2026-06-28T17:09:03.306Z