Researchers are doing intensive work on satellite images due to the information it contains with the development of computer vision algorithms and the ease of accessibility to satellite images. Building segmentation of satellite images can be used for many potential applications such as city, agricultural, and communication network planning. However, since no dataset exists for every region, the model trained in a region must gain generality. In this study, we trained several models in China and post-processing work was done on the best model selected among them. These models are evaluated in the Chicago region of the INRIA dataset. As can be seen from the results, although state-of-art results in this area have not been achieved, the results are promising. We aim to present our initial experimental results of a building segmentation from satellite images in this study.
翻译:利用计算机视像算法的发展和便于获取卫星图像,研究人员正在对卫星图像进行密集的工作,因为卫星图像包含着信息,开发了计算机视像算法,并方便了卫星图像的可及性。建立卫星图像的分层可以用于城市、农业和通信网络规划等许多潜在应用,但是,由于每个区域都没有数据集,因此,在某一区域培训的模型必须具有普遍性。在这项研究中,我们在中国培训了几个模型,并针对其中选择的最佳模型进行了后处理工作。这些模型在INRIA数据集的芝加哥区域进行了评价。从结果中可以看出,虽然在这一领域尚未取得最新成果,但结果很有希望。我们的目标是介绍我们最初的实验结果,在这一研究中根据卫星图像进行建筑分层分析。