2024
DOI: 10.1038/s41598-024-72884-0
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Training artificial neural networks using self-organizing migrating algorithm for skin segmentation

Quoc Bao Diep,
Thanh-Cong Truong,
Ivan Zelinka

Abstract: This study presents an application of the self-organizing migrating algorithm (SOMA) to train artificial neural networks for skin segmentation tasks. We compare the performance of SOMA with popular gradient-based optimization methods such as ADAM and SGDM, as well as with another evolutionary algorithm, differential evolution (DE). Experiments are conducted on the skin dataset, which consists of 245,057 samples with skin and non-skin labels. The results show that the neural network trained by SOMA achieves the… Show more

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