In recent years, large amount of high spatial-resolution remote sensing (HRRS) images are available for land-cover mapping. However, due to the complex information brought by the increased spatial resolution and the data disturbances caused by different conditions of image acquisition, it is often difficult to find an efficient method for achieving accurate land-cover classification with high-resolution and heterogeneous remote sensing images. In this paper, we propose a scheme to apply deep model obtained from labeled land-cover dataset to classify unlabeled HRRS images. The main idea is to rely on deep neural networks for presenting the contextual information contained in different types of land-covers and propose a pseudo-labeling and sample selection scheme for improving the transferability of deep models. More precisely, a deep Convolutional Neural Networks is first pre-trained with a well-annotated land-cover dataset, referred to as the source data. Then, given a target image with no labels, the pre-trained CNN model is utilized to classify the image in a patch-wise manner. The patches with high confidence are assigned with pseudo-labels and employed as the queries to retrieve related samples from the source data. The pseudo-labels confirmed with the retrieved results are regarded as supervised information for fine-tuning the pre-trained deep model. To obtain a pixel-wise land-cover classification with the target image, we rely on the fine-tuned CNN and develop a hybrid classification by combining patch-wise classification and hierarchical segmentation. In addition, we create a large-scale land-cover dataset containing 150 Gaofen-2 satellite images for CNN pre-training. Experiments on multi-source HRRS images show encouraging results and demonstrate the applicability of the proposed scheme to land-cover classification.
翻译:近些年来,有大量高空间分辨率遥感图像可用于土地覆盖绘图,然而,由于空间分辨率的提高和图像获取的不同条件造成的数据扰动带来了复杂的信息,因此往往难以找到一种高效的方法,用高分辨率和混杂式遥感图像实现准确的地面覆盖分类。在本文中,我们提出一个计划,将从标记的陆地覆盖数据集中获得的深层模型用于对未贴标签的HRRS图像进行分类。主要想法是依靠深层内部网络来展示不同类型土地覆盖的背景资料,并提出一个假标签和样本选择计划,以改善深层模型的可转移性。更准确地说,深层 Convolucial Neural网络首先经过精心培训,配有高清晰的地面覆盖数据集数据集数据集,然后根据没有标签的目标图像,使用经过预先培训的CNNM模型对图像进行分类,以近似的方式对图像进行分类。在高信任度的多层次覆盖中添加了假标签,并使用了假标签和样本选择,用于从源码中提取相关图像的精度部分。