首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >CLASSIFICATION OF DATA FROM AIRBORNE LIDAR BATHYMETRY WITH RANDOM FOREST ALGORITHM BASED ON DIFFERENT FEATURE VECTORS
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CLASSIFICATION OF DATA FROM AIRBORNE LIDAR BATHYMETRY WITH RANDOM FOREST ALGORITHM BASED ON DIFFERENT FEATURE VECTORS

机译:基于不同特征向量的随机森林算法与空机激光乐河沐浴族数据分类

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摘要

Modern full-waveform laser bathymetric scanners offer the possibility of a practical application of airborne laser bathymetry (ALB) data algorithms as a valuable source of information in the study of the aquatic environment. The reliability of the obtained results and the efficiency of the classification depend on the applied features. The input data for the classifier should consist of variables that have the ability to discriminate within the data set, for the detection and classification of objects on the seabed. The automatic detection of underwater objects is based on machine learning solutions. In this paper, the ALB data were used to present a classification process based on the random forest algorithm. The classification was carried out using two independent approaches with two feature vectors. The quality of classifications based on the full-waveform features vector and the geometric features vector was compared. The efficiency of each classification was verified using a confusion matrix. The obtained efficiency of the point classification in both cases was about 100% for the water surface, 99.9% for the seabed and about 60% for underwater objects. Better results for the classification of objects were obtained for the features vector based on features obtained directly from full-waveform data than for the vector obtained from geometric relationships in the point cloud.
机译:现代全波形激光沐浴扫描仪提供空气传播激光沐浴(ALB)数据算法的实际应用的可能性,作为水生环境研究中的有价值的信息来源。获得的结果的可靠性和分类的效率取决于所应用的特征。分类器的输入数据应由具有歧视数据集中的功能的变量,以便检测和分类海底上的物体。水下对象的自动检测是基于机器学习解决方案。在本文中,使用ALB数据来呈现基于随机林算法的分类过程。分类使用两个具有两个特征向量的独立方法进行。比较了基于全波形特征向量和几何特征向量的分类质量。使用混淆矩阵验证每个分类的效率。对于水面,在两种情况下,两种情况下的效率约为100%,海底99.9%,水下物体约为60%。基于直接从全波形数据获得的特征向量获得了对对象分类的更好的结果,而不是对于从点云中的几何关系获得的向量。

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