Abstract

Abstract. Labeling 3D point cloud data with traditional supervised learning methods requires considerable labelled samples, the collection of which is cost and time expensive. This work focuses on adopting domain adaption concept to transfer existing trained random forest classifiers (based on source domain) to new data scenes (target domain), which aims at reducing the dependence of accurate 3D semantic labeling in point clouds on training samples from the new data scene. Firstly, two random forest classifiers were firstly trained with existing samples previously collected for other data. They were different from each other by using two different decision tree construction algorithms: C4.5 with information gain ratio and CART with Gini index. Secondly, four random forest classifiers adapted to the target domain are derived through transferring each tree in the source random forest models with two types of operations: structure expansion and reduction-SER and structure transfer-STRUT. Finally, points in target domain are labelled by fusing the four newly derived random forest classifiers using weights of evidence based fusion model. To validate our method, experimental analysis was conducted using 3 datasets: one is used as the source domain data (Vaihingen data for 3D Semantic Labelling); another two are used as the target domain data from two cities in China (Jinmen city and Dunhuang city). Overall accuracies of 85.5 % and 83.3 % for 3D labelling were achieved for Jinmen city and Dunhuang city data respectively, with only 1/3 newly labelled samples compared to the cases without domain adaption.

Highlights

  • Assigning each airborne laser scanning (ALS) point with correct object class - 3D semantic labelling of ALS data, is still a challenging and complicated task in both computer vision and remote sensing community

  • This paper studied a model transfer method by (Segev et al, 2015) with domain adaption concept, which adapts the learned random forest model in source domain to target domain with fewer samples for semantic labelling of ALS data

  • Three ALS point cloud data sets were used in this experiment: one was exploited as source domain data to train the initial random forest models; the other two data sets were used as target domain data to validate the proposed complete approach based on model transfer and decision fusion for point cloud data labelling

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Summary

Introduction

Assigning each airborne laser scanning (ALS) point with correct object class - 3D semantic labelling of ALS data, is still a challenging and complicated task in both computer vision and remote sensing community. It is the basic step of much application processing such as highly accurate mapping, object extraction, building modelling and so on. Knowledge in source domain DS can be labelled samples or derived models In both computer vison (Gong et al, 2014) and remote sensing community (Tuia et al, 2016), transfer learning methods have been researched to reuse collected samples and existing models to mitigate the needs of large volume of samples for supervised classification

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