2023
DOI: 10.3390/fib12010002
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Pulp Particle Classification Based on Optical Fiber Analysis and Machine Learning Techniques

Stefan B. Lindström,
Rabab Amjad,
Elin Gåhlin
et al.

Abstract: In the pulp and paper industry, pulp testing is typically a labor-intensive process performed on hand-made laboratory sheets. Online quality control by automated image analysis and machine learning (ML) could provide a consistent, fast and cost-efficient alternative. In this study, four different supervised ML techniques—Lasso regression, support vector machine (SVM), feed-forward neural networks (FFNN), and recurrent neural networks (RNN)—were applied to fiber data obtained from fiber suspension micrographs a… Show more

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