Flexible Objektdetektion in 3D-Lidar-Scans/Flexible object detection in 3D lidar scans – Development of an object recognition system for creating and updating digital models

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Cover of Volume: wt Werkstattstechnik online Volume 113 (2023), Edition 03
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wt Werkstattstechnik online

Volume 113 (2023), Edition 03


Authors:
Publisher
VDI fachmedien, Düsseldorf
Copyright year
2023
ISSN-Online
1436-4980
ISSN-Print
1436-4980

Chapter information


Open Access Full access

Volume 113 (2023), Edition 03

Flexible Objektdetektion in 3D-Lidar-Scans/Flexible object detection in 3D lidar scans – Development of an object recognition system for creating and updating digital models


Authors:
ISSN-Print
1436-4980
ISSN-Online
1436-4980


Preview:

Bibliography


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