1:45 PM - 3:15 PM
[HGG01-P10] Exploring supervised classification of land cover using airborne lidar and aerial imagery
Keywords:land cover classification, airborne lidar, aerial imagery, decision tree, support vector machine
In this study, aerial image data and lidar data were used, supplemented by decision tree and support vector machine algorithms for land cover classification, with the highest overall accuracy of 84%. It can be seen that the relevant parameters and classification methods selected in this study have achieved good classification results and can be effectively used in the task of ground object recognition. Comparing the classification results of each experimental group, the producer accuracy and user accuracy of the three categories of trees, buildings, and planted shrubs are in the range of 43-97%. The manufacturer's accuracy and user's accuracy of artificial ground, grassland and bare land are in the range of 20-72%. The reason for this analysis is that the former three types have large differences in characteristics such as spectrum, elevation difference, dispersion, and wave width, while the characteristics of the latter three types are less obvious. Therefore, misjudgment of classification is easy to occur, resulting in poor classification results.