Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Safe Sight: AI-Based Multi-Industry PPE Detection System Using YOLOv8

View through CrossRef
Workplace safety is a major concern across industries such as construction, mining, pharmaceuticals, food packaging, and healthcare, where compliance with Personal Protective Equipment (PPE) standards is essential to reducing occupational hazards. Traditional monitoring methods rely heavily on manual supervision, which is often error-prone, inefficient, and difficult to scale in dynamic environments. This paper presents Safe Sight, an AI-based multi-industry PPE detection system built on the YOLOv8 object detection framework. The model was trained on a diverse dataset covering six critical PPE classes: helmet, face mask, safety vest, gloves, goggles, and surgical gown. Experimental evaluation demonstrated strong performance in terms of mean Average Precision (mAP), precision, recall, and F1-score, validating the model’s effectiveness for real-time applications. The system was deployed in a Python-based PyCharm application, enabling video and webcam-based detection with clear compliance indicators—green for PPE present and red for missing PPE. While the current prototype focuses on detection, the framework is scalable and can be extended with industry-specific datasets and IoT-based alerting and reporting systems to further strengthen workplace safety management.
Title: Safe Sight: AI-Based Multi-Industry PPE Detection System Using YOLOv8
Description:
Workplace safety is a major concern across industries such as construction, mining, pharmaceuticals, food packaging, and healthcare, where compliance with Personal Protective Equipment (PPE) standards is essential to reducing occupational hazards.
Traditional monitoring methods rely heavily on manual supervision, which is often error-prone, inefficient, and difficult to scale in dynamic environments.
This paper presents Safe Sight, an AI-based multi-industry PPE detection system built on the YOLOv8 object detection framework.
The model was trained on a diverse dataset covering six critical PPE classes: helmet, face mask, safety vest, gloves, goggles, and surgical gown.
Experimental evaluation demonstrated strong performance in terms of mean Average Precision (mAP), precision, recall, and F1-score, validating the model’s effectiveness for real-time applications.
The system was deployed in a Python-based PyCharm application, enabling video and webcam-based detection with clear compliance indicators—green for PPE present and red for missing PPE.
While the current prototype focuses on detection, the framework is scalable and can be extended with industry-specific datasets and IoT-based alerting and reporting systems to further strengthen workplace safety management.

Related Results

Use of Personal Protective Equipment in General Practice and Ambulance settings: a rapid review
Use of Personal Protective Equipment in General Practice and Ambulance settings: a rapid review
Abstract The use of personal protective equipment (PPE) is a cornerstone of infection prevention and control guidelines and was of increased importance during the C...
HUBUNGAN TINGKAT PENGETAHUAN DAN SIKAP DENGAN PEMAKAIAN ALAT PELINDUNG DIRI (APD) PEKERJA DI PABRIK PTPN7 KABUPATEN SELUMA
HUBUNGAN TINGKAT PENGETAHUAN DAN SIKAP DENGAN PEMAKAIAN ALAT PELINDUNG DIRI (APD) PEKERJA DI PABRIK PTPN7 KABUPATEN SELUMA
The problem that is found in the PTPN7 factory in Seluma district is that workers do not use Personal Protective Equipment (PPE), PPE has been provided by the factory but not used ...
Porcine placenta extract promotes keratinocyte and fibroblast activities via ERK AKT and JNK growth signaling pathways
Porcine placenta extract promotes keratinocyte and fibroblast activities via ERK AKT and JNK growth signaling pathways
Abstract Background: Porcine Placenta Extract (PPE) has been disclosed as a biological protein-enriched compound, whereas it has been declared the stimulatory effects on ce...
Attitude Towards Personal Protective Equipment in the French Nuclear Fuel Industry
Attitude Towards Personal Protective Equipment in the French Nuclear Fuel Industry
This descriptive cross-sectional study examines the compliance of workers from the European Gaseous Diffusion Uranium Enrichment Consortium (EURODIF) with personal protection equip...

Back to Top