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基于无人机可见光影像与OBIA-RF算法的城市不透水面提取
引用本文:叶章熙,郭倩,张健,张厚喜,邓辉.基于无人机可见光影像与OBIA-RF算法的城市不透水面提取[J].农业工程学报,2022,38(4):225-234.
作者姓名:叶章熙  郭倩  张健  张厚喜  邓辉
作者单位:1. 福建农林大学林学院,福州 350002;;1. 福建农林大学林学院,福州 350002;2. 福建农林大学南方红壤区水土保持国家林业和草原局重点实验室,福州 350002;3. 福建农林大学海峡两岸红壤区水土保持协同创新中心,福州 350002;;4. 成都理工大学地球科学学院,成都 610059
基金项目:国家自然科学基金项目(31901298);西藏自治区科学技术厅重点研发计划(XZ202001ZY0056G);福建省自然科学基金(2021J01059)
摘    要:不透水面是一种重要的城市地物类型,及时准确地获取城市不透水面信息对城市的合理规划、生态环境保护及可持续发展具有重要意义.低空无人机(Unmanned Aerial Vehicle,UAV)作为新型的遥感平台,具有操作灵活、时空分辨率高、受云雾影响小等优点,为中小尺度城市不透水面遥感监测提供了新的技术手段.以无人机可见光...

关 键 词:无人机  遥感  可见光影像  随机森林  不透水面提取  面向对象分类  特征选择
收稿时间:2021/9/8 0:00:00
修稿时间:2021/12/10 0:00:00

Extraction of urban impervious surface based on the visible images of UAV and OBIA-RF algorithm
Ye zhangxi,Guo Qian,Zhang Jian,Zhang Houxi,Deng Hui.Extraction of urban impervious surface based on the visible images of UAV and OBIA-RF algorithm[J].Transactions of the Chinese Society of Agricultural Engineering,2022,38(4):225-234.
Authors:Ye zhangxi  Guo Qian  Zhang Jian  Zhang Houxi  Deng Hui
Institution:1. College of Forestry, Fujian Agriculture and Forestry University, Fuzhou 350002, China;;1. College of Forestry, Fujian Agriculture and Forestry University, Fuzhou 350002, China; 2. Key Laboratory of State Forestry and Grassland Administration for Soil and Water Conservation in Red Soil Region of South China, Fujian Agriculture and Forestry University, Fuzhou 350002, China; 3. Cross-Strait Collaborative Innovation Center of Soil and Water Conservation,, Fujian Agriculture and Forestry University, Fuzhou 350002, China;; 4.College of Earth Sciences, Chengdu University of Technology, Chengdu, 610059, China
Abstract:Abstract: Impervious surfaces have been closely related to various environmental science, especially on the magnitude, position, spatial pattern, and perviousness-imperviousness ratio. The area of impervious surface has also rapidly expanded with the recent acceleration of urbanization. A rapid and accurate spatial distribution of urban impervious surfaces can provide crucial data for the urban ecological environment, rational planning, and regional sustainable development, particularly for the developing sponge cities, ecological and intelligent cities. As a result, remote sensing has received much attention in this field. In this research, an extraction workflow of urban impervious surface was proposed to treat the visible-light images from the unmanned aerial vehicle (UAV) using the object-based image analysis (OBIA) and random forest (RF). First, the image was segmented into the homogenous objects (basic units for classification), according to the optimal segmentation scale determined by the ESP2 plug-in. The classification schemes (S1-S7) were established to sequentially introduce the four additional types of features (41 in total), including vegetation index, texture, geometry, and terrain. The different feature subsets were also constructed, according to the spectral features of objects. In scheme S8, the feature recursive elimination (RFE) was used to determine the optimal features subsets (13 in total). Then, the RF was applied to the S1-S8 for the optimum scheme. Finally, the classifications were carried out using RF, support vector machine (SVM), and K-nearest neighbor (KNN), further to evaluate the performance using the feature subset of the best scheme. The results show that the UAV images with the ultra-high resolution were widely expected to serve as the finer ground object recognition. More importantly, the UAV images presented much more morphological and spatial features, compared with the previous satellite and aerial remote sensing images. The object-oriented image analysis provided more information about the objects from various features, compared with the spectral feature alone. All topographic, spectral, and vegetation index features dominated the classification accuracy, especially topographic features (nDSM). Specifically, the classification accuracies of S3-S7 after the introduction of nDSM were substantially improved(22.49-39.67 percentage points). The highest classification accuracy was achieved in the S8 using feature optimization subset, indicating an overall accuracy of 96.18%, and a Kappa coefficient of 0.95. The reason was that the feature optimization for the high-dimensional features resulted in a significant reduction in the number of features, particularly for the higher classification accuracy. Furthermore, the overall accuracy of RF increased by 1.35 and 14.18 percentage points, respectively, compared with the SVM and KNN, indicating better RF performance. Correspondingly, the object-oriented classification combined with the RF presented a higher accuracy, stronger anti-noise ability, and stable performance on the urban impervious surfaces, thereby effectively reducing the fragmentation of classification during extraction. To summarize, it is feasible to extract the urban impervious surface using UAV visible-light images, indicating the high extraction accuracy and the cost saving in the data acquisition. The finding can provide a strong reference to extract information about additional urban features from UAV visible light images, thereby promoting the application of consumer UAVs in urban remote sensing.
Keywords:UAV  remote sensing  visible image  random forest  impervious surface extraction  object-oriented classification  feature selection
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