3-D Urban Objects Detection and Classification From Point Clouds

Proceedings of the 13th ACM International Conference on Distributed and Event-based Systems(2019)

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摘要
In this paper, we present our approach to solve the DEBS Grand challenge 2019 which consists of classifying urban objects in different scenes that originate from a LiDAR sensor. In general, at any point in time, LiDAR data can be considered as a point cloud where a reliable feature extractor and a classification model are required to be able to recognize 3-D objects in such scenes. Herein, we propose and describe an implementation of a 3-D point cloud object detection and classification system based on a 3-D global feature called Ensemble of Shape Functions (ESF) and a random forest object classifier.
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关键词
ESF, Ensemble of Shape Functions, Object Recognition, PCL, Point Cloud
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