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An expert system for brain tumor detection: Fuzzy C-means with super resolution and convolutional neural network with extreme learning machine

机译:脑肿瘤检测专家系统:具有极端学习机的超分辨率和卷积神经网络的模糊C型

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摘要

Super-resolution, which is one of the trend issues of recent times, increases the resolution of the images to higher levels. Increasing the resolution of a vital image in terms of the information it contains such as brain magnetic resonance image (MRI), makes the important information in the MRI image more visible and clearer. Thus, it is provided that the borders of the tumors in the related image are found more successfully. In this study, brain tumor detection based on fuzzy C-means with super-resolution and convolutional neural networks with extreme learning machine algorithms (SR-FCM-CNN) approach has been proposed. The aim of this study has been segmented the tumors in high performance by using Super Resolution Fuzzy-C-Means (SR-FCM) approach for tumor detection from brain MR images. Afterward, feature extraction and pretrained SqueezeNet architecture from convolutional neural network (CNN) architectures and classification process with extreme learning machine (ELM) were performed. In the experimental studies, it has been determined that brain tumors have been better segmented and removed using SR-FCM method. Using the SquezeeNet architecture, features were extracted from a smaller neural network model with fewer parameters. In the proposed method, 98.33% accuracy rate has been detected in the diagnosis of segmented brain tumors using SR-FCM. This rate is greater 10% than the rate of recognition of brain tumors segmented with fuzzy C-means (FCM) without SR.
机译:超级分辨率,这是近期趋势问题之一,将图像的分辨率提高到更高水平。在其包含的信息中提高重要形象的分辨率,例如脑磁共振图像(MRI),使MRI图像中的重要信息更加明显和更清晰。因此,提供了在相关图像中的肿瘤的边界更成功地发现。在这项研究中,已经提出了基于具有极端学习机算法的超分辨率和卷积神经网络的模糊C型脑肿瘤检测,并提出了具有极端学习机算法(SR-FCM-CNN)方法的方法。本研究的目的已经通过使用脑MR图像肿瘤检测的超分辨率模糊-C-MERIC(SR-FCM)方法进行高性能的肿瘤。之后,执行来自卷积神经网络(CNN)架构和具有极端学习机(ELM)的分类过程的特征提取和预训练挤压架构。在实验研究中,已经确定使用SR-FCM方法更好地分段并除去脑肿瘤。使用QuezeNet架构,从一个较小的角色网络模型中提取特征,参数较少。在所提出的方法中,在使用SR-FCM的细分脑肿瘤的诊断中检测到98.33%的精度率。这种速率比没有SR的模糊C-Milit(FCM)分段的脑肿瘤的识别率大于10%。

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