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Retinal Blood Vessel Segmentation Using a Fully Convolutional Network - Transfer Learning from Patch- to Image-Level

机译:使用完全卷积网络的视网膜血管细分-将学习从补丁级别转移到图像级别

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Fully convolutional networks (FCNs) are well known to pro-vide state-of-the-art results in various medical image segmentation tasks. However, these models usually need a tremendous number of training samples to achieve good performances. Unfortunately, this requirement is often difficult to satisfy in the medical imaging field, due to the scarcity of labeled images. As a consequence, the common tricks for FCNs' training go from data augmentation and transfer learning to patch-based segmentation. In the latter, the segmentation of an image involves patch extraction, patch segmentation, then patch aggregation. This paper presents a framework that takes advantage of all these tricks by starting with a patch-level segmentation which is then extended to the image level by transfer learning. The proposed framework follows two main steps. Given a image database D, a first network Mp is designed and trained using patches extracted from D. Then, Mp is used to pre-train a FCN N_1 to be trained on the full sized images of V. Experimental results are presented on the task of retinal blood vessel segmentation using the well known publicly available DRIVE database.
机译:众所周知,全卷积网络(FCN)可在各种医学图像分割任务中提供最新的结果。但是,这些模型通常需要大量的训练样本才能获得良好的性能。不幸的是,由于标记图像的稀缺性,在医学成像领域中通常难以满足该要求。因此,用于FCN训练的常见技巧是从数据扩充和转移学习到基于补丁的分段。在后者中,图像的分割涉及补丁提取,补丁分割,然后补丁聚合。本文提出了一个利用所有这些技巧的框架,首先是补丁级别的分割,然后通过转移学习将其扩展到图像级别。拟议的框架遵循两个主要步骤。给定图像数据库D,使用从D提取的补丁设计和训练第一网络Mp。然后,使用Mp对FCN N_1进行预训练,以对V的全尺寸图像进行训练。该任务上给出了实验结果使用众所周知的公开DRIVE数据库对视网膜血管进行分割。

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