Multi-Scale Context Interaction Learning network for Medical Image Segmentation

Wenhao Fang, X. Han, Xu Qiao, Huiyan Jiang, Yenwei Chen
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Abstract

Semantic segmentation methods based on deep learning have provided the state-of-the-art performance in recent years. Based on deep learning, many Convolutional Neural Network (CNN) models have been proposed. Among them, U-Net with the simple encoder and decoder structure, can learn multi-scale features with various context information and has become one of the most popular neural network architectures for medical image segmentation. To reuse the features with the detail image structure in the encoder path, U-Net utilizes a skip-connection structure to simply copy the low-level features in the encoder to the decoder, and cannot explore the correlations between two paths and different scales. This study proposes a multi-scale context interaction learning network (MCIU-net) for medical image segmentation. First, to effectively fuse the features with detail structure in the encoder path and more semantic information in the decoder path, we conduct interaction learning on the corresponding scale via the bi-directional ConvLSTM (BConvLSTM) unit. Second, the interaction learning among all blocks of the decoder path is also employed for dynamically merging multi-scale contexts. We validate our proposed interaction learning network on three medical image datasets: retinal blood vessel segmentation, skin lesion segmentation, and lung segmentation, and demonstrate promising results compared with the state-of-the-art methods.
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医学图像分割的多尺度上下文交互学习网络
近年来,基于深度学习的语义分割方法提供了最先进的性能。基于深度学习,人们提出了许多卷积神经网络(CNN)模型。其中,U-Net以其简单的编码器和解码器结构,可以学习多种上下文信息的多尺度特征,成为医学图像分割中最流行的神经网络架构之一。为了重用编码器路径中具有细节图像结构的特征,U-Net采用了跳过连接结构,将编码器中的低级特征简单地复制到解码器中,而无法探索两条路径和不同尺度之间的相关性。提出了一种用于医学图像分割的多尺度上下文交互学习网络(MCIU-net)。首先,为了有效融合编码器路径中具有细节结构的特征和解码器路径中具有更多语义信息的特征,我们通过双向ConvLSTM (BConvLSTM)单元在相应尺度上进行交互学习。其次,还利用解码器路径各块之间的交互学习来动态合并多尺度上下文。我们在三个医学图像数据集上验证了我们提出的交互学习网络:视网膜血管分割、皮肤病变分割和肺分割,并与最先进的方法相比,展示了有希望的结果。
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