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2D to 3D Evolutionary Deep Convolutional Neural Networks for Medical Image Segmentation

机译:2D到3D进化深度卷积神经网络的医学图像分割

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Developing a Deep Convolutional Neural Network (DCNN) is a challenging task that involves deep learning with significant effort required to configure the network topology. The design of a 3D DCNN not only requires a good complicated structure but also a considerable number of appropriate parameters to run effectively. Evolutionary computation is an effective approach that can find an optimum network structure and/or its parameters automatically. Note that the Neuroevolution approach is computationally costly, even for developing 2D networks. As it is expected that it will require even more massive computation to develop 3D Neuroevolutionary networks, this research topic has not been investigated until now. In this article, in addition to developing 3D networks, we investigate the possibility of using 2D images and 2D Neuroevolutionary networks to develop 3D networks for 3D volume segmentation. In doing so, we propose to first establish new evolutionary 2D deep networks for medical image segmentation and then convert the 2D networks to 3D networks in order to obtain optimal evolutionary 3D deep convolutional neural networks. The proposed approach results in a massive saving in computational and processing time to develop 3D networks, while achieved high accuracy for 3D medical image segmentation of nine various datasets.
机译:开发深度卷积神经网络(DCNN)是一个具有挑战性的任务,涉及深入学习,具有配置网络拓扑所需的重大努力。 3D DCNN的设计不仅需要一个良好的复杂结构,而且需要有效运行的相当数量的适当参数。进化计算是一种有效的方法,可以自动找到最佳网络结构和/或其参数。请注意,即使对于开发2D网络,神经发展方法也是计算成本高昂的。由于预计,它将需要更加大量的计算来开发3D神经动力学网络,但直到现在尚未调查该研究。在本文中,除了开发3D网络之外,我们还研究了使用2D图像和2D神经辩护网络的可能性来开发3D卷分割的3D网络。在这样做时,我们建议首先为医学图像分割建立新的进化2D深网络,然后将2D网络转换为3D网络,以获得最佳的进化3D深卷积神经网络。所提出的方法导致计算和处理时间大量节省,以开发3D网络,同时实现了九个各种数据集的3D医学图像分割的高精度。

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