Due to the limitation of available labeled data, medical image segmentation is a challenging task for deep learning. Traditional data augmentation techniques have been shown to improve segmentation network performances by optimizing the usage of few training examples. However, current augmentation approaches for segmentation do not tackle the strong texture bias of convolutional neural networks, observed in several studies. This work shows on the MoNuSeg dataset that style augmentation, which is already used in classification tasks, helps reducing texture over-fitting and improves segmentation performance.
翻译:由于现有标签数据有限,医学图像分割是深层学习的一项艰巨任务,传统数据增强技术已证明通过优化使用少数培训实例来改善分割网络的性能,但是,目前的分割增强方法没有解决若干研究中观察到的动态神经网络的强烈纹理偏差问题。 这项工作显示在MONUSeg数据集中已经用于分类任务的样式增强,有助于减少纹理的过度装配,改善分割性能。