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Classification of Idiopathic Interstitial Pneumonia CT Images using Convolutional-net with Sparse Feature Extractors

机译:具有稀疏特征提取器的卷积网发作性间质性肺炎CT图像的分类

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We propose a computer aided diagnosis (CAD) system for classification of idiopathic interstitial pneumonias (IIPs). High resolution computed tomography (HRCT) images are considered as effective for diagnosis of IIPs. Our proposed CAD system is based on the convolutionalnet that is bio-plausible neural network model inspired from the visual system such like human. The convolutional-net extract local features and integrate them in the process of hierarchical neural network system. For natural image recognition by convolutional-net, Gabor feature extraction is known to give a good performance, however, the HRCT images may have different properties from those of natural images. Thus, we introduce a learning type feature extraction called "sparse coding" into the convolutional-net, and evaluate performance for classification of IIPs.
机译:我们提出了一种计算机辅助诊断(CAD)系统,用于分类特发性间质肺炎(IIPS)。高分辨率计算断层扫描(HRCT)图像被认为有效地诊断IIPS。我们所提出的CAD系统基于卷积器,即生物合理的神经网络模型,其来自视觉系统如人类。卷积网络提取本地特征并将它们集成在分层神经网络系统的过程中。对于通过卷积网络的自然图像识别,已知Gabor特征提取,以提供良好的性能,然而,HRCT图像可以具有来自自然图像的不同性质。因此,我们将一个名为“稀疏编码”的学习类型特征提取到卷积网络中,评估IIPS分类的性能。

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