Vision-Based Detection, Localization, and Optimized Path Planning for Rebar Intersections in Automated Construction

Research output: Contribution to journalArticlepeer-review

Abstract

The accurate detection and precise spatial localization of rebar intersection points are essential for advancing automation in construction tasks, such as robotic rebar tying. This paper presents a vision-based methodology that integrates RGB-D sensing, camera calibration, and coordinate transformation techniques to robustly detect and localize rebar crossing points. A structured detection framework efficiently extracts intersection coordinates from RGB-D imagery, subsequently mapping these points to a global reference frame using extrinsic camera calibration parameters. To achieve comprehensive site coverage and optimize operational efficiency, the path planning challenge is reformulated as a sequencing optimization problem of the identified intersections. We propose a greedy optimization algorithm that generates smooth, snake-like traversal paths in an efficient manner. Experimental validation confirms the effectiveness of our approach, demonstrating detection accuracy exceeding 99%, an average processing time below 125 ms per intersection point, and a maximum coordinate transformation error under 2 mm. The presented solution offers a lightweight, precise, and scalable framework, significantly facilitating the integration of vision-based methods into automated construction workflows.

Original languageEnglish
Article number7186
JournalApplied Sciences (Switzerland)
Volume15
Issue number13
DOIs
Publication statusPublished - Jul 2025

Keywords

  • RGB-D sensing
  • automated construction
  • coordinate transformation
  • path planning
  • rebar intersection detection
  • vision-based detection

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