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2025
Journal Article
Title
Addressing data scarcity in nanomaterial segmentation networks with differentiable rendering and generative modeling
Abstract
Nanomaterials’ properties, influenced by size, shape, and surface characteristics, are crucial for their technological, biological, and environmental applications. Accurate quantification of these materials is essential for advancing research. Deep learning segmentation networks offer precise, automated analysis, but their effectiveness depends on representative annotated datasets, which are difficult to obtain due to the high cost and manual effort required for imaging and annotation. To address this, we present DiffRenderGAN, a generative model that produces annotated synthetic data by integrating a differentiable renderer into a Generative Adversarial Network (GAN) framework. DiffRenderGAN optimizes rendering parameters to produce realistic, annotated images from non-annotated real microscopy images, reducing manual effort and improving segmentation performance compared to existing methods. Tested on ion and electron microscopy datasets, including titanium dioxide (TiO2), silicon dioxide (SiO2), and silver nanowires (AgNW), DiffRenderGAN bridges the gap between synthetic and real data, advancing the quantification and understanding of complex nanomaterial systems.
Author(s)
Project(s)
Analytiktechnikum für Gesundheits- und Umweltforschung
Keyword(s)
Deep learning
Image analysis
Image annotation
Image enhancement
Image segmentation
Nanostructured materials
Nanowires
Rendering (computer graphics)
Silicon oxides
Silver compounds
Titanium
Accurate quantifications
Automated analysis
Biological applications
Data scarcity
Environmental applications
Generative model
Property
Shape characteristics
Surface characteristics
Technological applications
Titanium dioxide