Development of a Machine Learning Powered Safety Observation System for Industrial Risk Zones
Abstrak
Abstract Industrial risk zones such as manufacturing plants, construction sites, chemical processing units, and mining areas are highly prone to accidents due to unsafe practices, human error, and environmental hazards. Traditional safety monitoring methods rely heavily on manual supervision and CCTV observation, which are often inefficient, reactive, and prone to oversight. This research presents the development of a Machine Learning powered Safety Observation System that enables automated, real-time detection of unsafe acts, hazardous conditions, and non-compliance with safety protocols in industrial environments. The proposed system leverages computer vision, deep learning algorithms, and real-time video analytics to monitor worker behavior, personal protective equipment (PPE) compliance, proximity to dangerous zones, and abnormal activities. The system architecture, methodology, algorithm design, and implementation framework are discussed in detail. Analytical evaluation shows significant improvement in hazard detection accuracy, response time, and reduction in accident probability. The study demonstrates how AI-based surveillance can transform industrial safety management from reactive monitoring to proactive risk prevention. Keywords: Machine Learning, Industrial Safety, Computer Vision, PPE Detection, Hazard Monitoring, AI Surveillance.
Penulis (5)
Prof. Vishal Tiwari
V. Singh
Dr. Sandeep Kumar Yadav
Prof. Nishant Kushwaha
Prof. Shekhar Choudhary
Akses Cepat
- Tahun Terbit
- 2026
- Bahasa
- en
- Sumber Database
- Semantic Scholar
- DOI
- 10.55041/ijsrem56382
- Akses
- Open Access ✓