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Semantic Segmentation of Breast Ultrasound Image with Pyramid Fuzzy Uncertainty Reduction and Direction Connectedness Feature

机译:金字塔模糊不确定性减小和方向关联特征的乳房超声图像的语义分割

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Deep learning approaches have achieved impressive results in breast ultrasound (BUS) image segmentation. However, these methods did not solve uncertainty and noise in BUS images well. Meanwhile, they did not involve the context information of BUS images, either. To address this issue, we present a novel deep learning structure for BUS image semantic segmentation by analyzing the uncertainty using a pyramid fuzzy block and generating a novel feature based on connectedness. There are three major contributions in this paper: (1) the structure of pyramid fuzzy block; (2) a novel membership function based on multi-convolution layers; and (3) a novel context feature based on connectedness. The proposed methods are applied to two datasets: a BUS image benchmark with two categories (background and tumor) and a five-category BUS image dataset with fat layer, mammary layer, muscle layer, background, and tumor. The proposed method achieves the best results on both datasets compared with eight state-of-the-art deep learning-based approaches.
机译:深度学习方法已经达到了胸部超声(总线)图像分割的令人印象深刻的结果。然而,这些方法没有解决公共汽车图像中的不确定性和噪声。同时,他们没有涉及总线图像的上下文信息。为了解决这个问题,我们通过使用金字塔模糊块分析不确定性并基于连通性生成新颖特征来提出一种新的总线图像语义分割的新型深度学习结构。本文有三项主要贡献:(1)金字塔模糊块的结构; (2)基于多卷积层的新型成员函数; (3)基于连接性的新型上下文特征。所提出的方法应用于两个数据集:具有两类(背景和肿瘤)的总线图像基准,以及具有脂肪层,乳房层,肌肉层,背景和肿瘤的五类总线图像数据集。该方法在两种基于深度学习的方法中,实现了两个数据集的最佳结果。

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