Automated Assembly Progress Monitoring in Modular Construction Factories Using Computer Vision-Based Instance Segmentation

Roshan Panahi, Joseph Louis, Ankur Podder, Colby Swanson, Shanti Pless

Research output: Contribution to conferencePaper

Abstract

Modular construction has recently gained interest as a transformative construction method. In this method, a large portion of the construction is performed inside factories, where processes are fast-paced and interdependent; therefore, any deviation from the schedule can delay the production. Such deviations are frequent in modular factories due to the labor-intensive nature of the tasks. This propagation of delays can be mitigated by continuously monitoring each process; however, current manual monitoring methods are laborious, and recently proposed contact sensor-based methods are intrusive to the work. In addition, recent computer vision-based monitoring methods inside factories are limited to detection algorithms that fail to provide the pixel-level accuracy required for assembly progress monitoring in highly occluded factory scenes, and they require a large number of manual annotations. Therefore, this paper proposes a method to monitor the installation of subassemblies in modular construction factories using mask R-CNN instance segmentation and improves the data efficiency of the model using a copy-paste augmentation method. This method was validated on the CCTV videos captured from a modular construction factory in the US, resulting in a 9% mAP improvement in segmentation.
Original languageAmerican English
Pages290-297
Number of pages8
StatePublished - 2024
EventASCE International Conference on Computing in Civil Engineering 2023 - Corvallis, Oregon
Duration: 25 Jun 202328 Jun 2023

Conference

ConferenceASCE International Conference on Computing in Civil Engineering 2023
CityCorvallis, Oregon
Period25/06/2328/06/23

NREL Publication Number

  • NREL/CP-5500-85648

Keywords

  • computer vision
  • construction productivity
  • modular

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