Deep Transfer Learning Optimization Techniques for Medical Image Classification: A Review

Paul Wahome Kariuki, P. Gikunda, J. Wandeto
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Abstract

Medical image classification is a complex and challenging task due to the heterogeneous nature of medical data. Deep transfer learning has emerged as a promising technique for medical image classification, allowing the leveraging of knowledge from pre-trained models learned from large-scale datasets, resulting in improved performance with minimal training and overcoming the disadvantage of small data sets. This paper concisely overviews cutting-edge deep transfer learning optimization approaches for medical image classification. The study covers convolutional neural networks and transfer learning techniques, including relation-based, feature-based, parameter-based, and instance-based transfer learning. Classical classifiers such as Resnet, VGG, Alexnet, Googlenet, and Inception are examined, and their performance on medical image classification tasks is compared. The paper also discusses optimization techniques, such as batch normalization, regularization, and weight initialization, as well as data augmentation and kernel mathematical formulations. The study concludes by identifying challenges when using deep transfer learning for medical image classification and proposing potential future approaches for this field.
医学图像分类的深度迁移学习优化技术综述
由于医学数据的异构性,医学图像分类是一项复杂而具有挑战性的任务。深度迁移学习已经成为医学图像分类的一种有前途的技术,允许利用从大规模数据集中学习的预训练模型的知识,从而以最少的训练提高性能并克服小数据集的缺点。本文简要概述了用于医学图像分类的深度迁移学习优化方法。本研究涵盖了卷积神经网络和迁移学习技术,包括基于关系的、基于特征的、基于参数的和基于实例的迁移学习。研究了Resnet、VGG、Alexnet、Googlenet和Inception等经典分类器,并比较了它们在医学图像分类任务中的性能。本文还讨论了优化技术,如批归一化、正则化和权重初始化,以及数据增强和核数学公式。该研究最后指出了在使用深度迁移学习进行医学图像分类时面临的挑战,并提出了该领域未来的潜在方法。
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