This paper presents the preliminary findings of a semi-supervised segmentation method for extracting roads from sattelite images. Artificial Neural Networks and image segmentation methods are among the most successful methods for extracting road data from satellite images. However, these models require large amounts of training data from different regions to achieve high accuracy rates. In cases where this data needs to be of more quantity or quality, it is a standard method to train deep neural networks by transferring knowledge from annotated data obtained from different sources. This study proposes a method that performs path segmentation with semi-supervised learning methods. A semi-supervised field adaptation method based on pseudo-labeling and Minimum Class Confusion method has been proposed, and it has been observed to increase performance in targeted datasets.
翻译:本文介绍了从卫星图象中提取道路的半监督分解方法的初步结果;人工神经网络和图像分解方法是从卫星图像中提取道路数据的最成功方法之一;然而,这些模型需要来自不同区域的大量培训数据才能达到较高的准确率;如果这种数据需要数量或质量更高,则是一种标准方法,通过从不同来源获得的附加说明数据中转让知识来培训深神经网络;本研究报告提出了一种使用半监督学习方法进行路径分解的方法;提出了一种基于伪标签和最低分类混集法的半监督实地适应方法,并观察到可以提高目标数据集的性能。