4.4 Article

A study on the classification of vegetation point cloud based on random forest in the straw checkerboard barriers area

期刊

JOURNAL OF INTELLIGENT & FUZZY SYSTEMS
卷 41, 期 3, 页码 4337-4349

出版社

IOS PRESS
DOI: 10.3233/JIFS-189694

关键词

Straw checkerboard barriers; random forest; point cloud characteristics; point cloud classification

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An improved random forest point cloud classification algorithm was proposed to address the automatic classification problem in the investigation of vegetation resources in straw checkerboard barriers region. By optimizing decision tree similarity, constructing weight matrix, and feature optimization, the algorithm achieved high classification accuracy in the experimental results.
Aiming at the problem of automatic classification of point cloud in the investigation of vegetation resources in the straw checkerboard barriers region, an improved random forest point cloud classification algorithm was proposed. According to the problems of decision tree redundancy and absolute majority voting in the existing random forest algorithm, first the similarity of the decision tree was calculated based on the tree edit distance, further clustered reduction based on the maximum and minimum distance algorithm, and then introduced classification accuracy of decision tree to construct weight matrix to implement weighted voting at the voting stage. Before random forest classification, based on the characteristics of point cloud data, a total of 20 point cloud single-point features and multi-point statistical features were selected to participate in point cloud classification, based on the point cloud data spatial distribution characteristics, three different scales for selecting point cloud neighborhoods were set based on the point cloud density, point cloud classification feature sets at different scales were constructed, optimizing important features of point cloud to participate in point cloud classification calculation after variable importance scored. The experimental results showed that the point cloud classification based on the optimized random forest algorithm in this paper achieved a total classification accuracy of 94.15% in dataset 1 acquired by lidar, the overall accuracy of classification on dataset 2 obtained by dense matching reaches 92.03%, both were higher than the unoptimized random forest algorithm and MRF, SVM point cloud classification method, and dimensionality reduction through feature optimization can greatly improve the efficiency of the algorithm.

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