使用卷积神经网络和 VGC 16 模型进行基于磁共振成像图像的脑肿瘤提取、分割和检测。

Ganesh Shunmugavel, K. Suriyan, Jayachandran Arumugam
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摘要

背景在本文中,我们将探讨如何利用 2 个卷积神经网络(CNN)模型设计和构建一个查找肿瘤的系统。在数字图像处理和深度学习的帮助下,我们可以制作一个系统,自动诊断和发现不同的疾病和异常。肿瘤检测系统可包括图像增强、分割、数据增强、特征提取和分类。在训练阶段,学习率用于改变权重和偏差。学习率也会改变权重。一个纪元是指向模型展示所有训练图像。由于训练数据可能非常庞大,因此每个纪元的数据会被分成若干批次。每个纪元都有一个训练时段和一个测试时段。每个epoch后,根据 CNN 的学习速度改变权重。这需要借助优化算法。除了预测平均交叉值外,建议的技术还使用预期的平均交叉值来识别失败实例。利用数字图像处理的基本思想,使用混合方法提取磁共振图像并找到肿瘤。本文在 MATLAB 的帮助下应用了所提出的算法。在医学图像处理中,脑肿瘤分割是一项重要任务。本文旨在研究利用磁共振成像分割脑肿瘤的不同方法。最近,使用深度学习方法进行自动分割变得流行起来,因为这些方法能获得最佳效果,而且比其他方法更擅长解决这个问题。深度学习方法还可用于快速、客观地处理和评估大量的磁共振成像图像数据。结论在提出的方案中还加入了基于卷积神经网络的分类方法,使其更加准确,并减少了计算所需的时间。此外,分类结果以肿瘤或健康大脑图像的形式给出。训练正确率为 98.5%。同样,验证准确率和验证损失都很高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Magnetic Resonance Imaging Images Based Brain Tumor Extraction, Segmentation and Detection Using Convolutional Neural Network and VGC 16 Model.
BACKGROUND In this paper, we look at how to design and build a system to find tumors using 2 Convolutional Neural Network (CNN) models. With the help of digital image processing and deep Learning, we can make a system that automatically diagnoses and finds different diseases and abnormalities. The tumor detection system may include image enhancement, segmentation, data enhancement, feature extraction, and classification. These options are set up so that the CNN model can give the best results. METHODS During the training phase, the learning rate is used to change the weights and bias. The learning rate also changes the weights. One Epoch is when all of the training images are shown to the model. As the training data may be very large, the data in each epoch are split into batches. Every epoch has a training session and a test session. After each epoch, the weights are changed based on how fast the CNN is learning. This is done with the help of optimization algorithms. The suggested technique uses the anticipated mean intersection over union value to identify failure instances in addition to forecasting the mean intersection over union. RESULTS This paper talks about how to separate brain tumors from magnetic resonance images of patients taken from "Brain web." Using basic ideas of digital image processing, magnetic resonance images are used to extract and find tumors using a hybrid method. In this paper, the proposed algorithm is applied with the help of MATLAB. In medical image processing, brain tumor segmentation is an important task. The goal of this paper is to look at different ways to divide brain tumors using magnetic resonance imaging. Recently, automatic segmentation using deep learning methods has become popular because these methods get the best results and are better at solving this problem than others. Deep learning methods can also be used to process and evaluate large amounts of magnetic resonance imaging image data quickly and objectively. CONCLUSION A classification method based on a convolution neural network is also added to the proposed scheme to make it more accurate and cut down on the amount of time it takes to do the calculations. Also, the results of the classification are given as images of a tumor or a healthy brain. The training is 98.5% correct. In the same way, both the validation accuracy and validation loss are high.
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