A Human Detection Approach for Intrusion in Hazardous Areas Using 4D-BIM-Based Spatial-Temporal Analysis and Computer Vision

Author:

Tran Si Van-Tien1ORCID,Lee Doyeop1,Bao Quy Lan1,Yoo Taehan1,Khan Muhammad2,Jo Junhyeon1,Park Chansik1ORCID

Affiliation:

1. Department of Architectural Engineering, Chung-Ang University, Seoul 06974, Republic of Korea

2. Safety Innovation Integration Research (SIIR) Laboratory, Department of Construction Science, Texas A&M University, 574 Ross St., College Station, TX 77840, USA

Abstract

Detecting intrusion in hazardous areas is one of the priorities and duties of safety enhancement. With the emergence of vision intelligence technology, hazardous-area-detection algorithms can support safety managers in predicting potential hazards and making decisions. However, because of the dynamic and complex nature of the jobsite, high-risk zones have a different geometry and can be changed following the schedule and workspace of activity. This leads to hazardous areas being annotated manually. Thus, this study proposes a computer vision and a 4D BIM-based approach for intrusion detection in hazardous areas, called IDC4D. IDC4D comprises three modules: (1) the 4D BIM-based safety planning (4BSP) module, which analyzes the hazardous area; (2) the hazardous area registration (HAR) module, which delivers the hazardous area from the BIM model to the camera’s first frame image; and (3) the hazardous-area-intrusion-detection module (HAID), which applies the computer vision algorithm to identify the correlation between workers and hazardous areas. The efficiency of the IDC4D approach is validated by testing a maintenance project on the construction site. IDC4D supports the planner in choosing the plan and detecting the event of workers entering hazardous areas while working. It showed an average precision of 93% and 94% in phase 1 and phase 2, respectively. These findings provide insight into how varying geometries of diverse hazard areas can be handled for enhancing intrusion detection.

Funder

National Research Foundation of Korea

Korea Agency for Infrastructure Technology Advancement under the Ministry of Land, Infrastructure and Transport

Publisher

MDPI AG

Subject

Building and Construction,Civil and Structural Engineering,Architecture

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