Stereo matching of high-resolution satellite images (HRSI) is still a fundamental but challenging task in the field of photogrammetry and remote sensing. Recently, deep learning (DL) methods, especially convolutional neural networks (CNNs), have demonstrated tremendous potential for stereo matching on public benchmark datasets. However, datasets for stereo matching of satellite images are scarce. To facilitate further research, this paper creates and publishes a challenging dataset, termed WHU-Stereo, for stereo matching DL network training and testing. This dataset is created by using airborne LiDAR point clouds and high-resolution stereo imageries taken from the Chinese GaoFen-7 satellite (GF-7). The WHU-Stereo dataset contains more than 1700 epipolar rectified image pairs, which cover six areas in China and includes various kinds of landscapes. We have assessed the accuracy of ground-truth disparity maps, and it is proved that our dataset achieves comparable precision compared with existing state-of-the-art stereo matching datasets. To verify its feasibility, in experiments, the hand-crafted SGM stereo matching algorithm and recent deep learning networks have been tested on the WHU-Stereo dataset. Experimental results show that deep learning networks can be well trained and achieves higher performance than hand-crafted SGM algorithm, and the dataset has great potential in remote sensing application. The WHU-Stereo dataset can serve as a challenging benchmark for stereo matching of high-resolution satellite images, and performance evaluation of deep learning models. Our dataset is available at https://github.com/Sheng029/WHU-Stereo
翻译:高分辨率卫星图像(HRSI)的立体匹配仍然是摄影测量和遥感领域一项根本性但具有挑战性的任务。最近,深层学习(DL)方法,特别是进化神经网络(GF-7),展示了在公共基准数据集上进行立体匹配的巨大潜力。然而,用于立体匹配卫星图像的数据集稀缺。为了便于进一步研究,本文创建并公布了一个具有挑战性的数据集,称为WHU-Stereo,用于立体匹配DL网络培训和测试。该数据集是利用中国高频Fen-7卫星(GF-7)的空升降LDAR点云和高分辨率立体图像创建的。最近,WHUS-S数据集包含超过1,700个上层校正校正的图像配对。我们评估了地面图差异地图的准确性,并证明我们的数据集与现有的具有挑战性的立体立体数据库匹配数据集具有可比性。为了核查其可行性,在实验中,手制的SGMAR-S匹配数据运行网络可以进行高额数据学习。