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Machine learning shadowgraph for particle size and shape characterization

Jiaqi Li, Siyao Shao, Jiarong Hong

2020Measurement Science and Technology37 citationsDOIOpen Access PDF

Abstract

Abstract Conventional image processing for a particle shadow image is usually time-consuming and suffers degraded image segmentation when dealing with images consisting of complex-shaped and clustered particles with varying backgrounds. In this paper, we introduce a robust learning-based method using a single convolution neural network for analyzing particle shadow images. Our approach employs a two-channel-output U-net model to generate a binary particle image and a particle centroid image. The binary particle image is subsequently segmented through a marker-controlled watershed approach with the particle centroid image as the marker image. The assessment of this method on both synthetic and experimental bubble images has exhibited a better performance compared to the state-of-art non-machine-learning method. The proposed machine learning shadow image processing approach provides a promising tool for real-time particle image analysis in industrial applications.

Topics & Concepts

CentroidArtificial intelligenceImage processingParticle (ecology)Shadow (psychology)Binary imageComputer visionComputer scienceDigital image processingPattern recognition (psychology)Convolution (computer science)Image (mathematics)Image segmentationConvolutional neural networkShadowgraphSpeckle patternArtificial neural networkSegmentationBinary numberDigital imageBinary classificationParticle filterImage resolutionPipeline (software)Machine visionParticle sizeFeature detection (computer vision)Mineral Processing and GrindingImage and Object Detection TechniquesMedical Image Segmentation Techniques
Machine learning shadowgraph for particle size and shape characterization | Litcius