[正规论文]肝脏CT扫描语义分割的邻域网络

I. Astono, J. Welsh, S. Chalup
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引用次数: 2

摘要

全卷积神经网络在语义分割方面取得了显著的成功。在整个架构中使用卷积层和跳过连接来组合不同的分辨率特征或预测已经在成功的网络中采用,例如U-Net和DenseNet。然而,这些模型采用了几个最大池化层,导致网络丢失空间信息,并要求它们模仿自动编码器架构,以原始输入分辨率执行语义分割。在本文中,我们提出了一种像全卷积神经网络一样使用卷积层自动提取特征的网络,但保留了每个提取特征的空间信息。然后利用提取的特征进行预测,并采用有效的上采样方法。我们在肝脏分割任务上评估网络性能,其中它与其他最先进的网络具有相当的准确性,同时在参数数量方面要小得多,计算时间也要快得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
[Regular Paper] Adjacent Network for Semantic Segmentation of Liver CT Scans
Fully convolutional neural networks have shown remarkable success in performing semantic segmentation. The use of convolutional layers for the entire architecture and skip connections to combine different resolution features or predictions have been adopted in successful networks, such as U-Net and DenseNet. However, these models employ several max-pooling layers that cause the network to lose spatial information and require them to mimic an autoencoder architecture to perform semantic segmentation at the original input resolution. In this paper, we propose a network that extracts features automatically with convolutional layers, like the fully convolutional neural network, but retains the spatial information of each of the extracted features. It then utilises the extracted features to make predictions with an efficient upsampling method. We evaluate the network performance on a liver segmentation task where it performs with comparable accuracy to other state-of-the-art networks while being much smaller in terms of the number of parameters as well as faster in computation time.
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