CVAIHCJan 4, 2022

AI visualization in Nanoscale Microscopy

arXiv:2201.00966v14 citationsHas Code
Originality Synthesis-oriented
AI Analysis

This enables nanoscience researchers to visually explore nanoscale morphologies using AI, contributing to explainable AI in nanotechnology, though it is incremental as it applies existing visualization techniques to a new domain.

The paper developed a deep learning-based visualization system for scanning electron microscope images of nanomaterials, using a Convolutional AutoEncoder to generate feature representations and architectural patterns, with results made available as open-source software.

Artificial Intelligence & Nanotechnology are promising areas for the future of humanity. While Deep Learning based Computer Vision has found applications in many fields from medicine to automotive, its application in nanotechnology can open doors for new scientific discoveries. Can we apply AI to explore objects that our eyes can't see such as nano scale sized objects? An AI platform to visualize nanoscale patterns learnt by a Deep Learning neural network can open new frontiers for nanotechnology. The objective of this paper is to develop a Deep Learning based visualization system on images of nanomaterials obtained by scanning electron microscope. This paper contributes an AI platform to enable any nanoscience researcher to use AI in visual exploration of nanoscale morphologies of nanomaterials. This AI is developed by a technique of visualizing intermediate activations of a Convolutional AutoEncoder. In this method, a nano scale specimen image is transformed into its feature representations by a Convolution Neural Network. The Convolutional AutoEncoder is trained on 100% SEM dataset, and then CNN visualization is applied. This AI generates various conceptual feature representations of the nanomaterial. While Deep Learning based image classification of SEM images are widely published in literature, there are not much publications that have visualized Deep neural networks of nanomaterials. There is a significant opportunity to gain insights from the learnings extracted by machine learning. This paper unlocks the potential of applying Deep Learning based Visualization on electron microscopy to offer AI extracted features and architectural patterns of various nanomaterials. This is a contribution in Explainable AI in nano scale objects. This paper contributes an open source AI with reproducible results at URL (https://sites.google.com/view/aifornanotechnology)

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