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RANDOM FORESTS-BASED FEATURE SELECTION FOR LAND-USE CLASSIFICATION USING LIDAR DATA AND ORTHOIMAGERY

机译:使用LIDAR数据和原子造纸的土地使用的随机森林的特征选择

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摘要

The development of lidar system, especially incorporated with high-resolution camera components, has shown great potential for urban classification. However, how to automatically select the best features for land-use classification is challenging. Random Forests, a newly developed machine learning algorithm, is receiving considerable attention in the field of image classification and pattern recognition. Especially, it can provide the measure of variable importance. Thus, in this study the performance of the Random Forests-based feature selection for urban areas was explored. First, we extract features from lidar data, including height-based, intensity-based GLCM measures; other spectral features can be obtained from imagery, such as Red, Blue and Green three bands, and GLCM-based measures. Finally, Random Forests is used to automatically select the optimal and uncorrelated features for land-use classification. 0.5-meter resolution lidar data and aerial imagery are used to assess the feature selection performance of Random Forests in the study area located in Mannheim, Germany. The results clearly demonstrate that the use of Random Forests-based feature selection can improve the classification performance by the selected features.
机译:LIDAR系统的开发,特别是借助高分辨率相机组件,对城市分类表示巨大潜力。但是,如何自动选择土地使用分类的最佳功能是具有挑战性的。一种新开发的机器学习算法随机森林,在图像分类和模式识别领域接受了相当大的关注。特别是,它可以提供可变重要性的衡量标准。因此,在这项研究中,探讨了城市地区随机森林的特征选择的性能。首先,我们提取LIDAR数据的特征,包括基于高度的强度的GLCM测量;其他光谱特征可以从图像中获得,例如红色,蓝色和绿色三带,以及基于GLCM的措施。最后,随机森林用于自动选择土地使用分类的最佳和不相关的功能。 0.5米分辨率的LIDAR数据和航空图像用于评估位于德国曼海姆的研究区随机林的特征选择性能。结果清楚地表明使用随机森林的特征选择可以通过所选功能来改善分类性能。

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