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DPANet: A Novel Network Based on Dense Pyramid Feature Extractor and Dual Correlation Analysis Attention Modules for Colon Glands Segmentation

机译:DPANet:一种基于密集金字塔特征提取器和双重相关分析注意模块的结肠腺分割新网络

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Accurate segmentation of glands from histology images is a crucial step to obtain reliable morphological statistics for quantitative diagnosis. However, this task is formidable because of the enormous variability in glandular appearance and the difficulty in distinguishing between glandular and non-glandular histological structures. To address this challenge, a novel neural network is proposed to effectively extract benign or malignant colon glands from histology images. Our network has the following innovations: (1) Under the same resolution space, multi-receptive field pyramid features are captured from dense multi-rate dilated convolution architecture with sounder dilated rate setting foraccurate gland segmentation. (2) Furthermore, the extracted features are down-sampled by B-spline algorithm to provide different resolution information for the network. (3) Specifically, we embed spatial-channel soft attention modules before each deconvolution operation in the decoder phase, which can better reintegrate features and support clear semantic similarity for network. All these unique operations boost the performance of our method on gland segmentation task. We achieve state-of-the-art performance on the publicly available Warwick-QU dataset.
机译:从组织学图像中正确分割腺体是获得可靠的形态学统计数据以进行定量诊断的关键步骤。但是,由于腺体外观的巨大差异以及区分腺体和非腺体组织学结构的困难,因此这项任务非常艰巨。为了解决这一挑战,提出了一种新型的神经网络,可以从组织学图像中有效地提取良性或恶性结肠腺。我们的网络具有以下创新功能:(1)在相同的分辨率空间下,从密集的多速率扩张卷积结构中捕获多接收场金字塔特征,并采用更合理的扩张速率设置进行准确的腺体分割。 (2)此外,提取的特征通过B样条算法进行下采样,以为网络提供不同的分辨率信息。 (3)具体来说,我们在解码器阶段的每次反卷积操作之前都嵌入了空间信道软注意模块,可以更好地重新集成特征并支持清晰的网络语义相似性。所有这些独特的操作提高了我们的方法在腺体分割任务上的性能。我们在公开可用的Warwick-QU数据集上实现了最先进的性能。

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