一种用于肝脏CT图像分割的嵌套注意力感知U-Net

Chen Li, Yusong Tan, W. Chen, Xin Luo, Yuanming Gao, Xiaogang Jia, Zhiying Wang
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引用次数: 69

摘要

肝癌是死亡率最高的癌症之一。为了帮助医生诊断和治疗肝脏病变,由于人工分割费时且容易出错,迫切需要一种自动肝脏分割模型。在本文中,我们提出了一个嵌套的注意力感知分割网络,命名为Attention unet++。我们提出的方法具有深度监督编码器-解码器架构和重新设计的密集跳过连接。unnet++在嵌套的卷积块之间引入了注意机制,使得在不同层次提取的特征可以与任务相关的选择合并。此外,由于引入了深度监督,以适度的性能下降为代价加快了修剪后网络的预测速度。我们在MICCAI 2017肝脏肿瘤分割(LiTS)挑战数据集上评估了该模型。注意:unnet++在肝脏分割方面取得了非常有竞争力的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attention Unet++: A Nested Attention-Aware U-Net for Liver CT Image Segmentation
Liver cancer is one of the cancers with the highest mortality. In order to help doctors diagnose and treat liver lesion, an automatic liver segmentation model is urgently needed due to manually segmentation is time-consuming and error-prone. In this paper, we propose a nested attention-aware segmentation network, named Attention UNet++. Our proposed method has a deep supervised encoder-decoder architecture and a redesigned dense skip connection. Attention UNet++ introduces attention mechanism between nested convolutional blocks so that the features extracted at different levels can be merged with a task-related selection. Besides, due to the introduction of deep supervision, the prediction speed of the pruned network is accelerated at the cost of modest performance degradation. We evaluated proposed model on MICCAI 2017 Liver Tumor Segmentation (LiTS) Challenge Dataset. Attention UNet++ achieved very competitive performance for liver segmentation.
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