Faculty of Mechanical - Electrical and Computer Engineering, School of Technology, Van Lang University, Ho Chi Minh City, Vietnam.
Faculty of Information Technology, University of Finance-Marketing, Ho Chi Minh City, Vietnam.
Sci Rep. 2024 Sep 30;14(1):22651. doi: 10.1038/s41598-024-72884-0.
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 highest accuracy (93.18%), outperforming ADAM (84.87%), SGDM (84.79%), and DE (91.32%). The visual evaluation also reveals the SOMA-trained neural network's accurate and reliable segmentation capabilities in most cases. These findings highlight the potential of incorporating evolutionary optimization algorithms like SOMA into the training process of artificial neural networks, significantly improving performance in image segmentation tasks.
本研究提出了一种自组织迁移算法(SOMA)在训练人工神经网络进行皮肤分割任务中的应用。我们将 SOMA 的性能与流行的基于梯度的优化方法(如 ADAM 和 SGDM)以及另一种进化算法——差分进化(DE)进行了比较。实验是在皮肤数据集上进行的,该数据集包含 245057 个具有皮肤和非皮肤标签的样本。结果表明,SOMA 训练的神经网络实现了最高的准确性(93.18%),优于 ADAM(84.87%)、SGDM(84.79%)和 DE(91.32%)。可视化评估还揭示了 SOMA 训练的神经网络在大多数情况下具有准确可靠的分割能力。这些发现强调了将像 SOMA 这样的进化优化算法纳入人工神经网络的训练过程的潜力,可显著提高图像分割任务的性能。