IVLGMLNov 26, 2019

Spectra2pix: Generating Nanostructure Images from Spectra

arXiv:1911.11525v1
Originality Incremental advance
AI Analysis

This addresses the design bottleneck for nano-photonics researchers, offering a more flexible and applicable tool, though it is incremental as it builds on existing machine learning approaches.

The authors tackled the complex design of nanostructures in nano-photonics by introducing spectra2pix, a deep neural network that generates 2D images of nanostructures from spectra, achieving successful generalization to unseen geometry sub-families.

The design of the nanostructures that are used in the field of nano-photonics has remained complex, very often relying on the intuition and expertise of the designer, ultimately limiting the reach and penetration of this groundbreaking approach. Recently, there has been an increasing number of studies suggesting to apply Machine Learning techniques for the design of nanostructures. Most of these studies engage Deep Learning techniques, which entails training a Deep Neural Network (DNN) to approximate the highly non-linear function of the underlying physical process between spectra and nanostructures. At the end of the training, the DNN allows an on-demand design of nanostructures, i.e. the model can infer nanostructure geometries for desired spectra. In this work, we introduce spectra2pix, which is a model DNN trained to generate 2D images of the designed nanostructures. Our model architecture is not limited to a closed set of nanostructure shapes, and can be trained for the design of any geometry. We show, for the first time, a successful generalization ability by designing a completely unseen sub-family of geometries. This generalization capability highlights the importance of our model architecture, and allows higher applicability for real-world design problems.

Foundations

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