Image Detection Model for Construction Worker Safety Conditions using Faster R-CNN

Many accidents occur on construction sites leading to injury and death. According to the Occupational Safety Health Administration (OSHA), falls, electrocutions, being struck-by-objects and being caught in or between an object were the four main causes of worker deaths on construction sites. Many fa...

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Veröffentlicht in:International journal of advanced computer science & applications 2020, Vol.11 (6)
Hauptverfasser: Saudi, Madihah Mohd, Hakim, Aiman, Ahmad, Azuan, Shakir, Ahmad, Hanafi, Mohd, Narzullaev, Anvar, Ifwat, Mohd
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container_issue 6
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container_title International journal of advanced computer science & applications
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creator Saudi, Madihah Mohd
Hakim, Aiman
Ahmad, Azuan
Shakir, Ahmad
Hanafi, Mohd
Narzullaev, Anvar
Ifwat, Mohd
description Many accidents occur on construction sites leading to injury and death. According to the Occupational Safety Health Administration (OSHA), falls, electrocutions, being struck-by-objects and being caught in or between an object were the four main causes of worker deaths on construction sites. Many factors contribute to the increase in accidents, and personal protective equipment (PPE) is one of the defense mechanisms used to mitigate them. Thus, this paper presents an image detection model about workers’ safety conditions based on PPE compliance by using the Faster Region-based Convolutional Neural Networks (R-CNN) algorithm. This experiment was conducted using Tensorflow involving 1,129 images from the MIT Places Database (from Scene Recognition) as a training dataset, and 333 anonymous dataset images from real construction sites for evaluation purposes. The experimental results showed 276 of the images being detected as safe, and an average accuracy rate of 70%. The strength of this paper is based on the image detection of the three PPE combinations, involving hardhats, vests and boots in the case of construction workers. In future, the threshold and image sharpness (low resolution) will be two main characteristics of further refinement in order to improve the accuracy rate.
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subjects Algorithms
Artificial neural networks
Construction industry
Construction site accidents
Datasets
Electrocutions
Image detection
Image resolution
Object recognition
Occupational safety
Personal protective equipment
title Image Detection Model for Construction Worker Safety Conditions using Faster R-CNN
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