Pulmonary CT Images Segmentation using CNN and UNet Models of Deep Learning

Humera Shaziya, K. Shyamala
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引用次数: 9

Abstract

Image Segmentation performs segregation of distinct segments of an image. Lung segmentation separate different elements of thoracic region. It is an essential prerequisite to several analysis tasks performed on the Computed Tomography (CT) images of lungs. Computational complexity is greatly reduced only when the required area is segregated from the entire CT image. Automated segmentation facilitates quick processing since it requires relatively less time to process more images. Conventional computer based segmentation methods require extensive support for determining the features. Users develop the features and provide to the system which then utilize those features to delineate the required regions. Recent advancements in deep learning showed optimal results in solving numerous image recognition and segmentation problems. The significant characteristic of deep learning is that the model itself learns the features from the input images and then apply the learned features to process new images. The most successful model of deep learning is Convolutional Neural Network (CNN) has outperformed earlier techniques for image recognition, object and face detection and is considered to be the most successful architecture of deep learning. CNN has also been applied for segmentation tasks. In this proposed work, CNN and UNet models have been implemented to evaluate the processing of medical images. The focus of the work is on CT images of lungs. Results obtained on the lungs dataset of 267 images on CNN is 81.34% and UNet is 82.61%. Thus U-Net has improved the dice coefficient by 1.27%. The experiments show that UNet model outperforms CNN model to segment the lung fields in CT images.
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基于CNN和UNet深度学习模型的肺部CT图像分割
图像分割对图像的不同部分进行分离。肺分割将胸椎区域的不同元素分开。这是对肺部计算机断层扫描(CT)图像进行分析的必要前提。只有将需要的区域从整个CT图像中分离出来,才能大大降低计算复杂度。自动分割有助于快速处理,因为它需要相对较少的时间来处理更多的图像。传统的基于计算机的分割方法需要广泛的支持来确定特征。用户开发特征并提供给系统,然后系统利用这些特征来描绘所需的区域。深度学习的最新进展在解决许多图像识别和分割问题方面显示出最佳结果。深度学习的显著特点是模型本身从输入图像中学习特征,然后应用学习到的特征来处理新图像。最成功的深度学习模型是卷积神经网络(CNN),它在图像识别、物体和人脸检测方面的表现优于早期的技术,被认为是深度学习中最成功的架构。CNN也被用于分割任务。在本文中,我们使用CNN和UNet模型来评估医学图像的处理。这项工作的重点是肺部的CT图像。在CNN上267张图像的肺部数据集上得到的结果为81.34%,UNet为82.61%。因此,U-Net将骰子系数提高了1.27%。实验表明,UNet模型在CT图像肺场分割方面优于CNN模型。
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