深度学习在超声计算机层析图像分类中的应用

Marwa Fradi, Mouna Afif, El-Hadi Zahzeh, K. Bouallegue, Mohsen Machhout
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引用次数: 3

摘要

深度学习技术在机器人、机械和医学等多个领域取得了技术进步,特别是在医学成像领域。鉴于深度学习的这些最新发展,将记录医学成像进化需要一个用于分类过程的迁移深度学习应用程序。在本文中,我们的方法是基于超声计算机断层扫描图像(USCT)的深度学习迁移模型,如Inception V3、MobileNet、NasNet和Ameobanet,将它们自动分为三类。在一开始,USCT数据集的增强是通过预处理算法完成的。然后,在我们的数据集上应用了不同模型的传递卷积神经网络架构。最后,我们在GPU上实现了我们的神经网络应用。作为结果,我们克服了以前的工作,训练精度的值为100%,测试精度的值为96%,时间短。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transfer-Deep Learning Application for Ultrasonic Computed Tomographic Image Classification
Deep-learning techniques have led to a technological progress in several fields such as robotics, mechanics, and medicine specifically in the area of medical imaging. On the light of these recent developments in deep learning it will be recorded that medical imaging evolution needs a transfer deep learning application for the classification process. In this paper, our approach consists on a deep learning transfer models such us Inception V3, MobileNet, NasNet and Ameobanet on Ultrasonic Computed tomography images (USCT) to classify them automatically into three classes. In the beginning, USCT dataset augmentation has been done with pre-processing algorithms. Then, a Transfer Convolutional Neural Network Architecture has been applied with different models on our dataset. Finally, we have implemented our neural network application on GPU. As results we have overcoming previously works by a value of 100% for train accuracy and a value of 96% for test accuracy with a short time process.
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