基于自编码器特征提取的乳腺癌病理图像超像素分割

Jingfan Zhou, Jun Ruan, Chenchen Wu, Guanglu Ye, Zhikui Zhu, Junqiu Yue, Yanggeling Zhang
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引用次数: 6

摘要

为了对乳腺癌区域进行识别,需要对乳腺癌的病理图像进行逐像素的区分。这对机器学习来说是一项巨大的工作。因此,对乳腺癌病理图像进行超像素分割预处理是必要的,可以减少需要判别的像素数。在本文中:1;我们训练了几种自编码器网络,并评估了它们在图像聚类中的性能。2. 为了提高图像聚类效果,我们采用了深嵌入聚类(DEC)中定义的聚类损失。3.为了增强神经网络提取特征的能力,我们在网络中加入了类初始块、Sequeeze和激励(SE)块。4. 改进了现有简单线性迭代聚类算法的性能,实现了高维特征的超像素分割。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Superpixel Segmentation of Breast Cancer Pathology Images Based on Features Extracted from the Autoencoder
In order to identify the breast cancer region, it is necessary to discriminate the pathological image of breast cancer pixel by pixel. This is a very huge work for machine learning. Therefore, the preprocessing of superpixel segmentation of breast cancer pathology images is necessary for reducing the number of pixels that need to be discriminated. In this paper: 1. We have trained serveral kinds of autoencoder networks and evaluated their performance in images clustering. 2. In order to enhance the image clustering effect, we adopt the clustering loss which is defined in Deep Embedded Clustering (DEC). 3. In order to enhance the ability of neural networks of extracting features, we added inception-like block, Sequeeze and Excitation (SE) block to the network. 4. We improved the performance of current Simple Linear Iterative Clustering (SLIC) algorithm to achieve superpixel segmentation of high-dimensional features.
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