Convolutional Neural Network‐Based Regression Model for Distribution Data from X‐Ray Radiographs of Metallic Foams
Tristan E. Kammbach,
Paul H. Kamm,
Tillmann R. Neu
et al.
Abstract:The difficult determination of morphological properties in metal foams stands behind the reasons why metal foams are not widely used in industry, since quality control of the batches produced is limited to destructive methods. To approach this challenge, a new method of analysis of morphological properties based on 2D X‐Ray radiograms and the employment of a new Convolutional Neural Network architecture is proposed. The training of this model is based on a combined approach of simulating simplified foams as pr… Show more
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