Transfer Learning methods are widely used in satellite image segmentation problems and improve performance upon classical supervised learning methods. In this study, we present a semantic segmentation method that allows us to make land cover maps by using transfer learning methods. We compare models trained in low-resolution images with insufficient data for the targeted region or zoom level. In order to boost performance on target data we experiment with models trained with unsupervised, semi-supervised and supervised transfer learning approaches, including satellite images from public datasets and other unlabeled sources. According to experimental results, transfer learning improves segmentation performance 3.4% MIoU (Mean Intersection over Union) in rural regions and 12.9% MIoU in urban regions. We observed that transfer learning is more effective when two datasets share a comparable zoom level and are labeled with identical rules; otherwise, semi-supervised learning is more effective by using the data as unlabeled. In addition, experiments showed that HRNet outperformed building segmentation approaches in multi-class segmentation.
翻译:转让学习方法被广泛用于卫星图像分解问题,并改进古典监督学习方法的绩效。在这项研究中,我们提出了一个语义分解方法,使我们能够使用转让学习方法绘制土地覆盖图。我们比较了低分辨率图像培训模型,而目标区域或缩放水平的数据不足。为了提高目标数据绩效,我们试验了以无人监督、半监督和监督的转移学习方法培训的模式,包括来自公共数据集和其他未标注来源的卫星图像。根据实验结果,转让学习提高了农村地区3.4%的MIOU(跨联盟的海洋截面)和城市地区12.9%的MIOU的分解性能。我们发现,如果两个数据集具有可比的缩放水平,并且有相同的规则标签,则转移学习效果更大;否则,使用未标注的数据,半监督的学习更为有效。此外,实验表明,在多级分解中,HRNet的构建分解方法优于多级分解法。