📄 Abstract
Abstract: The ability to connect visual patterns with the processes that form them
represents one of the deepest forms of visual understanding. Textures of clouds
and waves, the growth of cities and forests, or the formation of materials and
landscapes are all examples of patterns emerging from underlying mechanisms. We
present the Scitextures dataset, a large-scale collection of textures and
visual patterns from all domains of science, tech, and art, along with the
models and code that generate these images. Covering over 1,200 different
models and 100,000 images of patterns and textures from physics, chemistry,
biology, sociology, technology, mathematics, and art, this dataset offers a way
to explore the connection between the visual patterns that shape our world and
the mechanisms that produce them. Created by an agentic AI pipeline that
autonomously collects and implements models in standardized form, we use
SciTextures to evaluate the ability of leading AI models to link visual
patterns to the models and code that generate them, and to identify different
patterns that emerged from the same process. We also test AIs ability to infer
and recreate the mechanisms behind visual patterns by providing a natural image
of a real-world pattern and asking the AI to identify, model, and code the
mechanism that formed the pattern, then run this code to generate a simulated
image that is compared to the real image. These benchmarks show that
vision-language models (VLMs) can understand and simulate the physical system
beyond a visual pattern. The dataset and code are available at:
https://zenodo.org/records/17485502
Authors (2)
Sagi Eppel
Alona Strugatski
Submitted
November 3, 2025
Key Contributions
The paper introduces SciTextures, a large-scale dataset connecting over 1,200 models and 100,000 images of visual patterns and textures across science, tech, and art. It utilizes an agentic AI pipeline to autonomously collect and implement generative models, offering a unique resource for exploring the relationship between visual patterns and their underlying mechanisms.
Business Value
Provides a rich resource for training and evaluating AI models in visual understanding, generative art, and scientific simulation, potentially accelerating research and development in fields requiring complex visual pattern generation and analysis.