2024
DOI: 10.1002/acm2.14542
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Hyperparameter selection for dataset‐constrained semantic segmentation: Practical machine learning optimization

Chris Boyd,
Gregory C. Brown,
Timothy J. Kleinig
et al.

Abstract: Purpose/aimThis paper provides a pedagogical example for systematic machine learning optimization in small dataset image segmentation, emphasizing hyperparameter selections. A simple process is presented for medical physicists to examine hyperparameter optimization. This is also applied to a case‐study, demonstrating the benefit of the method.Materials and methodsAn unrestricted public Computed Tomography (CT) dataset, with binary organ segmentation, was used to develop a multiclass segmentation model. To star… Show more

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