Papers
Topics
Authors
Recent
Gemini 2.5 Flash
Gemini 2.5 Flash
139 tokens/sec
GPT-4o
47 tokens/sec
Gemini 2.5 Pro Pro
43 tokens/sec
o3 Pro
4 tokens/sec
GPT-4.1 Pro
47 tokens/sec
DeepSeek R1 via Azure Pro
28 tokens/sec
2000 character limit reached

Toward Learning Latent-Variable Representations of Microstructures by Optimizing in Spatial Statistics Space (2402.11103v1)

Published 16 Feb 2024 in cs.LG and cond-mat.mtrl-sci

Abstract: In Materials Science, material development involves evaluating and optimizing the internal structures of the material, generically referred to as microstructures. Microstructures structure is stochastic, analogously to image textures. A particular microstructure can be well characterized by its spatial statistics, analogously to image texture being characterized by the response to a Fourier-like filter bank. Material design would benefit from low-dimensional representation of microstructures Paulson et al. (2017). In this work, we train a Variational Autoencoders (VAE) to produce reconstructions of textures that preserve the spatial statistics of the original texture, while not necessarily reconstructing the same image in data space. We accomplish this by adding a differentiable term to the cost function in order to minimize the distance between the original and the reconstruction in spatial statistics space. Our experiments indicate that it is possible to train a VAE that minimizes the distance in spatial statistics space between the original and the reconstruction of synthetic images. In future work, we will apply the same techniques to microstructures, with the goal of obtaining low-dimensional representations of material microstructures.

Definition Search Book Streamline Icon: https://streamlinehq.com
References (13)
  1. Versatile algorithms for the computation of 2-point spatial correlations in quantifying material structure. Integrating Materials and Manufacturing Innovation, 5:1–15, 2016.
  2. Albert Einstein. Méthode pour la détermination de valeurs statistiques d’observations concernant des grandeurs soumises à des fluctuations irrégulières. Archives des Sciences, 37:254–256, 1914.
  3. Image style transfer using convolutional neural networks. In Proceedings of the IEEE conference on computer vision and pattern recognition, pp.  2414–2423, 2016.
  4. Surya R Kalidindi. Hierarchical materials informatics: novel analytics for materials data. Elsevier, 2015.
  5. Auto-encoding variational bayes. In Proc. ICLR, 2014.
  6. Structural analysis of natural textures by fourier transformation. Computer vision, graphics, and image processing, 24(3):347–362, 1983.
  7. Integrated design of multiscale, multifunctional materials and products. Butterworth-Heinemann, 2009.
  8. Reduced-order structure-property linkages for polycrystalline microstructures based on 2-point statistics. Acta Materialia, 129:428–438, 2017.
  9. Texturevae: Learning interpretable representations of material microstructures using variational autoencoders. In AAAI Spring Symposium: MLPS, 2021.
  10. A statistical learning approach for the design of polycrystalline materials. Statistical Analysis and Data Mining: The ASA Data Science Journal, 1(5):306–321, 2009.
  11. Classifying images of materials: Achieving viewpoint and illumination independence. In Computer Vision—ECCV 2002: 7th European Conference on Computer Vision Copenhagen, Denmark, May 28–31, 2002 Proceedings, Part III 7, pp.  255–271. Springer, 2002.
  12. Visualizing and understanding convolutional networks. In Computer Vision–ECCV 2014: 13th European Conference, Zurich, Switzerland, September 6-12, 2014, Proceedings, Part I 13, pp. 818–833. Springer, 2014.
  13. Da-vegan: Differentiably augmenting vae-gan for microstructure reconstruction from extremely small data sets. Computational Materials Science, 232:112661, 2024.
Citations (1)

Summary

We haven't generated a summary for this paper yet.

X Twitter Logo Streamline Icon: https://streamlinehq.com

Tweets