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Hybrid approach for alignment of a pre-processed three-dimensional point cloud, video, and CAD model using partial point cloud in retrofitting applications

Author

Listed:
  • Ashok Kumar Patil
  • G Ajay Kumar
  • Tae-Hyoung Kim
  • Young Ho Chai

Abstract

Acquiring the three-dimensional point cloud data of a scene using a laser scanner and the alignment of the point cloud data within a real-time video environment view of a camera is a very new concept and is an efficient method for constructing, monitoring, and retrofitting complex engineering models in heavy industrial plants. This article presents a novel prototype framework for virtual retrofitting applications. The workflow includes an efficient 4-in-1 alignment, beginning with the coordination of pre-processed three-dimensional point cloud data using a partial point cloud from LiDAR and alignment of the pre-processed point cloud within the video scene using a frame-by-frame registering method. Finally, the proposed approach can be utilized in pre-retrofitting applications by pre-generated three-dimensional computer-aided design models virtually retrofitted with the help of a synchronized point cloud, and a video scene is efficiently visualized using a wearable virtual reality device. The prototype method is demonstrated in a real-world setting, using the partial point cloud from LiDAR, pre-processed point cloud data, and video from a two-dimensional camera.

Suggested Citation

  • Ashok Kumar Patil & G Ajay Kumar & Tae-Hyoung Kim & Young Ho Chai, 2018. "Hybrid approach for alignment of a pre-processed three-dimensional point cloud, video, and CAD model using partial point cloud in retrofitting applications," International Journal of Distributed Sensor Networks, , vol. 14(3), pages 15501477187, March.
  • Handle: RePEc:sae:intdis:v:14:y:2018:i:3:p:1550147718766452
    DOI: 10.1177/1550147718766452
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