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A Dual-Tree Complex Wavelet Transform Based Convolutional Neural Network for Human Thyroid Medical Image Segmentation

机译:基于双树复小波变换的卷积神经网络用于人体甲状腺医学图像分割

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This research proposes a novel dual-tree complex wavelet transform based Convolutional Neural Network (WCNN) to perform organ tissue segmentation from medical images. Accurate and efficient segmentation on the medical image of human organ is a critical step towards disease diagnosis. For medical image segmentation tasks, conventional Convolutional Neural Networks (CNNs) are: 1) inclined to ignore crucial texture information of the image due to the limitations of typical pooling approaches, and 2) insufficiently robust to noise. To overcome the obstacles, a spectral domain transformation technique is adopted in the CNN. Specifically, a dual-tree complex wavelet pooling layer is concatenated to the traditional pooling process in a CNN. By using wavelet decomposition, the image becomes scalable in the spatial direction, allowing accurate recognition of textures. The WCNN decomposes the image into a number of wavelet subbands, and reduces noisy data by filtering out high-frequency subbands. The performance of WCNN is tested on standard image classification datasets, and applied for human thyroid optical coherence tomography (OCT) image segmentation. Compared to the traditional CNNs using max pooling, experimental results demonstrate that the WCNN approach obtains outstanding consistency and accuracy in the image segmentation domain.
机译:这项研究提出了一种新颖的基于双树复小波变换的卷积神经网络(WCNN),可以从医学图像中进行器官组织分割。在人体器官的医学图像上进行准确而有效的分割是迈向疾病诊断的关键步骤。对于医学图像分割任务,常规的卷积神经网络(CNN)有:1)由于典型合并方法的局限性倾向于忽略图像的关键纹理信息,以及2)对噪声的鲁棒性不足。为了克服这些障碍,在CNN中采用了一种频谱域转换技术。具体而言,将双树复数小波池化层连接到CNN中的传统池化过程。通过使用小波分解,图像在空间方向上可缩放,从而可以准确识别纹理。 WCNN将图像分解为多个小波子带,并通过滤除高频子带来减少噪声数据。 WCNN的性能在标准图像分类数据集中进行了测试,并应用于人类甲状腺光学相​​干断层扫描(OCT)图像分割。与使用最大池的传统CNN相比,实验结果表明WCNN方法在图像分割域中获得了出色的一致性和准确性。

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