Pixel Relationships-based Regularizer for Retinal Vessel Image Segmentation

L. Hakim, Takio Kurita
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引用次数: 1

Abstract

The task of image segmentation is to classify each pixel in the image based on the appropriate label. Various deep learning approaches have been proposed for image segmentation that offers high accuracy and deep architecture. However, the deep learning technique uses a pixel-wise loss function for the training process. Using pixel-wise loss neglected the pixel neighbor relationships in the network learning process. The neighboring relationship of the pixels is essential information in the image. Utilizing neighboring pixel information provides an advantage over using only pixel-to-pixel information. This study presents regularizers to give the pixel neighbor relationship information to the learning process. The regularizers are constructed by the graph theory approach and topology approach: By graph theory approach, graph Laplacian is used to utilize the smoothness of segmented images based on output images and ground-truth images. By topology approach, Euler characteristic is used to identify and minimize the number of isolated objects on segmented images. Experiments show that our scheme successfully captures pixel neighbor relations and improves the performance of the convolutional neural network better than the baseline without a regularization term.
基于像素关系的视网膜血管图像分割正则化算法
图像分割的任务是根据合适的标签对图像中的每个像素进行分类。人们提出了各种深度学习方法用于图像分割,这些方法提供了高精度和深度架构。然而,深度学习技术在训练过程中使用逐像素损失函数。使用逐像素损失忽略了网络学习过程中的像素邻居关系。像素之间的相邻关系是图像中必不可少的信息。利用相邻像素信息比仅使用像素到像素信息具有优势。本研究提出正则化器,将像素邻近关系信息提供给学习过程。通过图论方法和拓扑学方法构造正则化器:通过图论方法,利用基于输出图像和真地图像的分割图像的平滑性,利用图拉普拉斯算子。通过拓扑方法,利用欧拉特征来识别和最小化分割图像上孤立物体的数量。实验表明,我们的方案成功地捕获了像素间的邻居关系,比没有正则化项的基线更好地提高了卷积神经网络的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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