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Segmentation of backscattered electron images of geopolymers using convolutional autoencoder network

Shohreh Sheiati, Sanaz Behboodi, Navid Ranjbar

2022Expert Systems with Applications21 citationsDOIOpen Access PDF

Abstract

Segmentation of backscattered electron (BSE) images of cementitious materials is often used to quantify different microstructural features for the sake of performance estimation at macro-scale levels. However, the heterogeneous nature of cementitious matrices compounds with varying imaging conditions can lead the conventional segmentation methods to a processing bottleneck for largescale experiments. To overcome these challenges, in this study, we evaluate the potential of deep autoencoder convolutional networks, specifically SegNet, for automatic segmentation of fly ash-based geopolymer images. We present the SegNet power in achieving a comparable accuracy to the human performance even with a few BSE images in the model’s training. The SegNet demonstrates magnification independent training that adapts itself with both seen and unseen magnification levels. A comparative study shows that SegNet outperforms the Gaussian method on uncontrolled imaging conditions such as background brightness levels. In addition, we demonstrate the self-learning capability of SegNet in poorly annotated areas.

Topics & Concepts

Artificial intelligenceComputer scienceSegmentationAutoencoderDeep learningPattern recognition (psychology)Image segmentationConvolutional neural networkBottleneckComputer visionEmbedded systemNon-Destructive Testing TechniquesInfrastructure Maintenance and MonitoringConcrete Corrosion and Durability
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