HUMAN INTELLIGENCE BASED DEEP LEARNING TECHNIQUE FOR IMAGE SEGMENATION OF BRAIN MRI

SAHIK FAREEDA, K PRASAD BABU
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Abstract

In this work, a fully automated system for brain region segmentation by using Human intelligence based deep learning technique is proposed. Deep learning technique is most popular state of the art method in recent applications. There are two stages involved the pre-processing and segmentation via Convolutional Neural Network (CNN).The MRI image with noise is used as an input image. MRI images are collected from publicly available database Open Access Series of Image Studies (OASIS). Three layers are used in this network, which is used to segment the brain region. The MR images are first given to pre-processing step to enhance the quality of image for segmentation. In this work, Non Local Mean Filter is used for image denoising which calculates weighted average of pixels and finding similarity with the target pixel. The denoised image is given as an input of CNN. Brain region segmentation by deep learning involves feature extraction. CNN learns features directly from an image and no handcrafted features are needed. The method consists of three steps such as input data generation, construction of model and learning the parameter. So, a compact representation from the image as image patches are given as input data to the multilayer convolutional neural network. The supervised deep network consists of three layers. Input image is given to the input layer, it predict the label from input layer. In every hidden layer one convolutional layer and one pooling layer is Present. Convolutional layer compute a dot product of the weights, input, and add a bias term. In this work 4 training images and 1 testing images in ages from the database are used. CNN is trained iteratively with representative input patterns along with target label. The execution of the CNN gives high exactness in the scope of 94% to 96%.
基于人类智能的脑mri图像分割深度学习技术
在这项工作中,提出了一个基于人类智能的深度学习技术的全自动脑区域分割系统。深度学习技术是近年来应用最为广泛的一种方法。通过卷积神经网络(CNN)对图像进行预处理和分割。使用带噪声的MRI图像作为输入图像。MRI图像从公开可用的数据库Open Access Series of Image Studies (OASIS)中收集。该网络使用了三层,用于分割大脑区域。首先对磁共振图像进行预处理,以提高图像的分割质量。在这项工作中,非局部均值滤波器用于图像去噪,它计算像素的加权平均并寻找与目标像素的相似度。将去噪后的图像作为CNN的输入。基于深度学习的脑区域分割涉及到特征提取。CNN直接从图像中学习特征,不需要手工制作特征。该方法包括输入数据生成、模型构建和参数学习三个步骤。因此,将图像的压缩表示为图像补丁作为多层卷积神经网络的输入数据。监督深度网络由三层组成。将输入图像交给输入层,由输入层预测标签。在每个隐藏层中存在一个卷积层和一个池化层。卷积层计算权值的点积,输入,并加一个偏置项。在本工作中,使用了数据库中的4张训练图像和1张年龄测试图像。CNN是用具有代表性的输入模式和目标标签进行迭代训练的。CNN的执行给出了很高的准确率,在94%到96%的范围内。
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