Abstract

Various classification methods have been developed to extract meaningful information from Airborne Laser Scanner (ALS) point clouds. However, the accuracy and the computational efficiency of the existing methods need to be improved, especially for the analysis of large datasets (e.g., at regional or national levels). In this paper, we present a novel deep learning approach to ground classification for Digital Terrain Model (DTM) extraction as well as for multi-class land-cover classification, delivering highly accurate classification results in a computationally efficient manner. Considering the top–down acquisition angle of ALS data, the point cloud is initially projected on the horizontal plane and converted into a multi-dimensional image. Then, classification techniques based on Fully Convolutional Networks (FCN) with dilated kernels are designed to perform pixel-wise image classification. Finally, labels are transferred from pixels to the original ALS points. We also designed a Multi-Scale FCN (MS-FCN) architecture to minimize the loss of information during the point-to-image conversion. In the ground classification experiment, we compared our method to a Convolutional Neural Network (CNN)-based method and LAStools software. We obtained a lower total error on both the International Society for Photogrammetry and Remote Sensing (ISPRS) filter test benchmark dataset and AHN-3 dataset in the Netherlands. In the multi-class classification experiment, our method resulted in higher precision and recall values compared to the traditional machine learning technique using Random Forest (RF); it accurately detected small buildings. The FCN achieved precision and recall values of 0.93 and 0.94 when RF obtained 0.91 and 0.92, respectively. Moreover, our strategy significantly improved the computational efficiency of state-of-the-art CNN-based methods, reducing the point-to-image conversion time from 47 h to 36 min in our experiments on the ISPRS filter test dataset. Misclassification errors remained in situations that were not included in the training dataset, such as large buildings and bridges, or contained noisy measurements.

Highlights

  • Digital Terrain Models (DTM) can be generated by classifying a point cloud into ground and non-ground classes

  • The International Society for Photogrammetry and Remote Sensing (ISPRS) filter test dataset was used as a benchmark dataset for ground classification, while the Actueel Hoogtebestand Nederland 3 (AHN3) dataset was used for a modern high point-density dataset, for ground classification, and for the vegetation and building classification

  • This paper introduces an Fully Convolutional Networks (FCN)-based approach to classify Airborne Laser Scanner (ALS) point clouds into ground, building, and vegetation

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Summary

Introduction

Digital Terrain Models (DTM) can be generated by classifying a point cloud into ground and non-ground classes. This task is known as filtering [1]. Even though a point cloud could be derived from photogrammetric images using a dense image-matching technique, ALS data offer the advantage of penetrating through the vegetation canopy to reach the ground surface. It is useful for DTM extraction because the ground surface under the vegetation can be detected from ALS data while this is unlikely when photogrammetric point clouds are used. DTMs are crucial for geospatial information analysis, they play a vital role for the further classification of point clouds when the classifier uses the height above the ground as an important feature [2,3,4,5,6]

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