PAANet: Progressive Alternating Attention for Automatic Medical Image Segmentation

Abhishek Srivastava, S. Chanda, Debesh Jha, M. Riegler, P. Halvorsen, Dag Johansen, U. Pal
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引用次数: 4

Abstract

Medical image segmentation can provide detailed information for clinical analysis which can be useful for scenarios where the detailed location of a finding is important. Knowing the location of a disease can play a vital role in treatment and decision-making. Convolutional neural network (CNN) based encoder-decoder techniques have advanced the performance of automated medical image segmentation systems. Several such CNN-based methodologies utilize techniques such as spatial- and channel-wise attention to enhance performance. Another technique that has drawn attention in recent years is residual dense blocks (RDBs). The successive convolutional layers in densely connected blocks are capable of extracting diverse features with varied receptive fields and thus, enhancing performance. However, consecutive stacked convolutional operators may not necessarily generate features that facilitate the identification of the target structures. In this paper, we propose a progressive alternating attention network (PAANet). We develop progressive alternating attention dense (PAAD) blocks, which construct a guiding attention map (GAM) after every convolutional layer in the dense blocks using features from all scales. The GAM allows the following layers in the dense blocks to focus on the spatial locations relevant to the target region. Every alternate PAAD block inverts the GAM to generate a reverse attention map which guides ensuing layers to extract boundary and edge-related information, refining the segmentation process. Our experiments on three different biomedical image segmentation datasets exhibit that our PAANet achieves favorable performance when compared to other state-of-the-art methods.
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PAANet:渐进式交替关注自动医学图像分割
医学图像分割可以为临床分析提供详细的信息,这对于发现的详细位置很重要的情况是有用的。了解疾病的位置可以在治疗和决策中发挥至关重要的作用。基于卷积神经网络(CNN)的编解码器技术提高了自动医学图像分割系统的性能。一些这样的基于cnn的方法利用诸如空间和频道明智的注意力等技术来提高性能。另一项近年来备受关注的技术是残差密集块(rdb)。密集连接块中的连续卷积层能够提取具有不同接收野的不同特征,从而提高性能。然而,连续堆叠卷积算子不一定能生成有利于目标结构识别的特征。本文提出了一种渐进式交替注意网络(PAANet)。我们开发了渐进式交替注意密集(PAAD)块,它在密集块的每个卷积层之后使用所有尺度的特征构建一个引导注意图(GAM)。GAM允许密集块中的以下层聚焦于与目标区域相关的空间位置。每个交替的PAAD块反转GAM以生成一个反向注意图,该图指导后续层提取边界和边缘相关信息,改进分割过程。我们在三种不同的生物医学图像分割数据集上的实验表明,与其他最先进的方法相比,我们的PAANet取得了良好的性能。
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