Can the Perception Data of Autonomous Vehicles Be Used to Replace Mobile Mapping Surveys?—A Case Study Surveying Roadside City Trees
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Published:2023-03-27
Issue:7
Volume:15
Page:1790
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ISSN:2072-4292
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Container-title:Remote Sensing
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language:en
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Short-container-title:Remote Sensing
Author:
Hyyppä Eric1ORCID, Manninen Petri1, Maanpää Jyri1ORCID, Taher Josef1ORCID, Litkey Paula1, Hyyti Heikki1ORCID, Kukko Antero12ORCID, Kaartinen Harri1ORCID, Ahokas Eero1, Yu Xiaowei1ORCID, Muhojoki Jesse1, Lehtomäki Matti1, Virtanen Juho-Pekka1, Hyyppä Juha12
Affiliation:
1. Department of Remote Sensing and Photogrammetry, Finnish Geospatial Research Institute, Vuorimiehentie 5, 02150 Espoo, Finland 2. Department of Built Environment, Aalto University, School of Engineering, P.O. Box 11000, 00076 Aalto, Finland
Abstract
The continuous flow of autonomous vehicle-based data could revolutionize current map updating procedures and allow completely new types of mapping applications. Therefore, in this article, we demonstrate the feasibility of using perception data of autonomous vehicles to replace traditionally conducted mobile mapping surveys with a case study focusing on updating a register of roadside city trees. In our experiment, we drove along a 1.3-km-long road in Helsinki to collect laser scanner data using our autonomous car platform ARVO, which is based on a Ford Mondeo hybrid passenger vehicle equipped with a Velodyne VLS-128 Alpha Prime scanner and other high-grade sensors for autonomous perception. For comparison, laser scanner data from the same region were also collected with a specially-planned high-grade mobile mapping laser scanning system. Based on our results, the diameter at breast height, one of the key parameters of city tree registers, could be estimated with a lower root-mean-square error from the perception data of the autonomous car than from the specially-planned mobile laser scanning survey, provided that time-based filtering was included in the post-processing of the autonomous perception data to mitigate distortions in the obtained point cloud. Therefore, appropriately performed post-processing of the autonomous perception data can be regarded as a viable option for keeping maps updated in road environments. However, point cloud-processing algorithms may need to be adapted for the post-processing of autonomous perception data due to the differences in the sensors and their arrangements compared to designated mobile mapping systems. We also emphasize that time-based filtering may be required in the post-processing of autonomous perception data due to point cloud distortions around objects seen at multiple times. This highlights the importance of saving the time stamp for each data point in the autonomous perception data or saving the temporal order of the data points.
Funder
Henry Ford Foundation Academy of Finland Ministry of Agriculture and Forestry
Subject
General Earth and Planetary Sciences
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