College of Geo-Exploration Science and Technology, Jilin University, Changchun 130026, China.
Key Laboratory of Urban Land Resources Monitoring and Simulation, Ministry of Natural Resources, Shenzhen 518000, China.
Sensors (Basel). 2022 May 22;22(10):3924. doi: 10.3390/s22103924.
Impervious surface as an evaluation indicator of urbanization is crucial for urban planning and management. It is necessary to obtain impervious surface information with high accuracy and resolution to meet dynamic monitoring under rapid urban development. At present, the methods of impervious surface extraction are primarily based on medium-low-resolution images. Therefore, it is of theoretical and application value to construct an impervious surface extraction method that applies to high-resolution satellite images and can solve the shadow misclassification problem. This paper builds an impervious surface extraction model by Bayes discriminant analysis (BDA). The Gaussian prior model is incorporated into the Bayes discriminant analysis to establish a new impervious surface extraction model (GBDA) applicable to high-resolution remote sensing images. Using GF-2 and Sentinel-2 remote sensing images as experimental data, we discuss and analyze the applicability of BDA and GBDA in impervious surface extraction of high-resolution remote sensing images. The results showed that the four methods, SVM, RF, BDA and GBDA, had OA values of 91.26%, 94.91%, 94.64% and 97.84% and Kappa values of 0.825, 0.898, 0.893 and 0.957, respectively, in the extraction results of GF-2. In the results of effective Sentinel-2 extraction, the OA values of the four methods were 87.94%, 91.79%, 92.19% and 93.51% and the Kappa values were 0.759, 0.836, 0.844 and 0.870, respectively. Compared with the support vector machine (SVM), random forest (RF) and BDA methods, GBDA has significantly improved the extraction accuracy. GBDA enhances the robustness and generalization ability of the model and can improve the shadow misclassification phenomenon of high-resolution images. The model constructed in this paper is highly reliable for extracting impervious surfaces from high-resolution remote sensing images, exploring the application value of Bayes discriminant analysis in impervious surface extraction and providing technical support for impervious surface information of high spatial resolution and high quality.
不透水面作为城市化的评价指标,对于城市规划和管理至关重要。为了满足快速城市发展下的动态监测,需要获取高精度、高分辨率的不透水面信息。目前,不透水面提取方法主要基于中低分辨率图像。因此,构建一种适用于高分辨率卫星图像且能够解决阴影误分类问题的不透水面提取方法具有理论和应用价值。本文通过贝叶斯判别分析(BDA)构建不透水面提取模型。将高斯先验模型引入贝叶斯判别分析中,建立一种新的适用于高分辨率遥感图像的不透水面提取模型(GBDA)。利用 GF-2 和 Sentinel-2 遥感图像作为实验数据,讨论和分析了 BDA 和 GBDA 在高分辨率遥感图像不透水面提取中的适用性。结果表明,SVM、RF、BDA 和 GBDA 四种方法在 GF-2 提取结果中的 OA 值分别为 91.26%、94.91%、94.64%和 97.84%,Kappa 值分别为 0.825、0.898、0.893 和 0.957;在有效的 Sentinel-2 提取结果中,四种方法的 OA 值分别为 87.94%、91.79%、92.19%和 93.51%,Kappa 值分别为 0.759、0.836、0.844 和 0.870。与支持向量机(SVM)、随机森林(RF)和 BDA 方法相比,GBDA 显著提高了提取精度。GBDA 增强了模型的稳健性和泛化能力,能够改善高分辨率图像的阴影误分类现象。本文构建的模型能够可靠地从高分辨率遥感图像中提取不透水面,探索了贝叶斯判别分析在不透水面提取中的应用价值,为高质量、高空间分辨率的不透水面信息提取提供了技术支持。