Vision-based volumetric measurements via deep learning-based point cloud segmentation for material management in jobsites

Emerging vision-based frameworks have demonstrated the great potential to robustly perform volumetric measurements on point cloud models, which has several applications for site material management (e.g., during earthworks). However, prevalent vision-based frameworks to date involve human interventi...

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Veröffentlicht in:Automation in construction 2021-01, Vol.121, p.103430, Article 103430
Hauptverfasser: Kamari, Mirsalar, Ham, Youngjib
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description Emerging vision-based frameworks have demonstrated the great potential to robustly perform volumetric measurements on point cloud models, which has several applications for site material management (e.g., during earthworks). However, prevalent vision-based frameworks to date involve human interventions to manually trim objects of interest from point cloud models, which would be time-consuming and labor-intensive. In addition, point cloud models for volumetric measurements are often incomplete and noisy. To address such challenges, we automatically detect and segment target objects in point cloud models via a deep learning-based approach and then map the semantic values onto point cloud models for 3D semantic segmentation. Once target objects are segmented, the associated volumes are quantified through the proposed vision-based computational process. For evaluation, case studies were performed on material piles in the real-world. The proposed method has the potential to enhance vision-based volumetric measurements, which supports systematic decision-making for material management in jobsites. •New vision-based volumetric measurements to reduce human intervention.•3D point cloud segmentation based on 2D semantic segmentation.•The integration of volumetric measurements with vision-based object recognition.•Results show the potential for enhanced vision-based volumetric measurements.
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subjects Decision making
Deep learning
Image segmentation
Object recognition
Point cloud segmentation
Semantic segmentation
Semantics
Target detection
Target recognition
Three dimensional models
Vision
Visual sensing and analytics
Volumetric measurements
title Vision-based volumetric measurements via deep learning-based point cloud segmentation for material management in jobsites
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