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Method based on deep neural network to extract appearance and geometry features for pulmonary textures classification

机译:基于深神经网络的方法提取肺部纹理分类的外观和几何特征

摘要

Provided is a method based on deep neural network to extract appearance and geometry features for pulmonary textures classification, which belongs to the technical fields of medical image processing and computer vision. Taking 217 pulmonary computed tomography images as original data, several groups of datasets are generated through a preprocessing procedure. Each group includes a CT image patch, a corresponding image patch containing geometry information and a ground-truth label. A dual-branch residual network is constructed, including two branches separately takes CT image patches and corresponding image patches containing geometry information as input. Appearance and geometry information of pulmonary textures are learnt by the dual-branch residual network, and then they are fused to achieve high accuracy for pulmonary texture classification. Besides, the proposed network architecture is clear, easy to be constructed and implemented.
机译:提供了一种基于深神经网络的方法,提取肺部纹理分类的外观和几何特征,属于医学图像处理和计算机视野的技术领域。 将217个肺计算断层扫描图像作为原始数据,通过预处理过程生成几组数据集。 每个组包括CT图像补丁,一个包含几何信息和地面标签的相应图像贴片。 构造双分支残差网络,包括两个分支,单独将CT图像斑块和包含几何信息的相应图像贴片作为输入。 通过双分支剩余网络学习肺纹理的外观和几何信息,然后融合以实现肺部纹理分类的高精度。 此外,所提出的网络架构很清晰,易于构造和实现。

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