Abstract
In catalysis research, the amount of microscopy data acquired when imaging dynamic processes is often too much for non-automated quantitative analysis. Developing machine learned segmentation models is challenged by the requirement of high-quality annotated training data. We thus substitute expert-annotated data with a physics-based sequential synthetic data model. We study environmental SEM (ESEM) data collected from isopropanol oxidation to acetone over cobalt oxide. Upon applying a temperature program during the reaction a phase transition occurs, reducing the catalyst selectivity towards acetone. This is accompanied on the μm ESEM by the formation of cracks between the pores of the catalyst surface. We aim to generate synthetic data to train a neural network capable of semantic segmentation (pixel-wise labelling) of this ESEM data. This analysis will lead to insights into this phase transition. To generate synthetic data that approximates this transition, our algorithm composes the ESEM images of the room-temperature catalyst with dynamically evolving synthetic cracks satisfying physical construction principles, gathered from qualitative knowledge accessible in the ESEM data. We mimic the surface crack growth propagation along surface paths, avoiding close vicinity to nearby pores. This physics-based approach results in a lowered rate of false positives compared to a random approach.
Supplementary materials
Title
Supplementary information
Description
Catalyst information: Description of the samples preparation, and technical details about the acquisition of the images through electron microscopy.
Is Section 2 we provide the web link to the available code. The code is ready-to-use for demo examples.
In Section 3 we provide the web link to a video demonstration of our computer vision framework.
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