基于CNN算法和深度学习技术的脑肿瘤检测与分类

Sultan B. Fayyadh, A. Ibrahim
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引用次数: 1

摘要

通过图像处理来检测脑肿瘤是一种综合的方法。这项工作计划提出一个系统,利用CNN算法和深度学习技术,从MRI图像到世界上最流行的肿瘤,对脑肿瘤进行分类和检测。本工作采用MRI图像数据集作为输入,进行预处理和分割以增强图像。我们的神经网络设计更容易训练,并且可以在另一台计算机上运行,因为设计的算法需要更少的资源。使用的数据集包含3064张不同肿瘤相关的图像,脑膜瘤(708片)、胶质瘤(1426片)和脑垂体瘤(930片),采用卷积神经网络(CNN)对脑肿瘤进行分类,该算法采用由多层组成的特殊结构,神经网络的实现由块组成,每个块包含多种类型的层,首先是输入层,然后是卷积层;则使用的激活函数为整流线性单元(ReLU)、归一化层和池化层。此外,它还包含了完全连接的分类层和softmax层,对于所使用的数据集,该方法在测试阶段获得的总体准确率为98029%,在训练阶段获得的总体准确率为98.29%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Brain Tumor Detection and Classifiaction Using CNN Algorithm and Deep Learning Techniques
Detection of brain tumors through image processing is done by using an integrated approach. This work was planned to present a system to classify and detect brain tumors using the CNN algorithm and deep learning techniques from MRI images to the most popular tumors in the world. This work was performed using an MRI image dataset as input, Preprocessing and segmentation were performed to enhance the images. Our neural network design is simpler to train and it's possible to run it on another computer because the designed algorithm requires fewer resources. The dataset was used contains 3064 images related to different tumors meningioma (708 slices), glioma (1426 slices), and pituitary tumor (930 slices), the convolution neural network (CNN) was used through which the brain tumor is classified according to a special structure of this algorithm consisting of several layers, The implementation of the neural network consist blocks each block include many types of layer, first, the input layer then followed by convolution layer, then the activation function that used was Rectified Linear Units (ReLU), normalization layer, and pooling layer. Also, it contains the classification layer fully connected and softmax layer the overall accuracy rate obtained from the proposed approach was (98,029%) in the testing stage and (98.29%) in the training stage for the data set were used.
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