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3D Large Kernel Anisotropic Network for Brain Tumor Segmentation

机译:用于脑肿瘤分割的3D大内核各向异性网络

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摘要

Brain tumor segmentation in magnetic resonance images is a key step for brain cancer diagnosis and clinical treatment. Recently, deep convolutional neural network (DNN) based models have become a popular and effective choice due to their learning capability with a large amount of parameters. However, in traditional 3D DNN models, the valid receptive fields are not large enough for global details from the objective and the large amount of parameters are easy to cause high computational cost and model overfitting. In order to address these problems, we propose a 3D large kernel anisotropic network. In our model, the large kernels in the decoders ensure the valid receptive field is large enough and the anisotropic convolutional blocks in the encoders simulate the traditional isotropic ones with fewer parameters. Our proposed model is evaluated on datasets from the MICCAI BRATS 17 challenge and outperforms several popular 3D DNN architectures.
机译:磁共振图像中的脑肿瘤分割是脑癌诊断和临床治疗的关键步骤。近年来,基于深度卷积神经网络(DNN)的模型由于具有大量参数的学习能力,已成为一种流行且有效的选择。但是,在传统的3D DNN模型中,有效的接收场对于目标的全局细节而言不够大,并且大量的参数容易造成高计算成本和模型过度拟合。为了解决这些问题,我们提出了一个3D大内核各向异性网络。在我们的模型中,解码器中的大内核确保有效的接收场足够大,并且编码器中的各向异性卷积块用较少的参数模拟传统的各向同性块。我们提出的模型是在来自MICCAI BRATS 17挑战的数据集上进行评估的,其性能优于几种流行的3D DNN架构。

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