HAZARDOUS DETECTION MODEL AT CONSTRUCTION SITE USING IMAGE DETECTION

Authors

  • MadihahMohd Saudi1
  • Obsatar Sinaga
  • MohdHaizam Saudi
  • Aiman Azhar

Abstract

Many factors lead to an incident for workers at construction sites. They were exposed toa different type of hazardous such as fall from scaffolding, electric shock, and hit by a crane. Yet, at the moment, we are still lackinga solution to mitigate such incidents by using image detection and machine learning algorithm with a cost-effective and real-time solution. Hence,this paper presents a hazardous detection model at a construction site by using image detection to ensure worker safety at a construction site. This experiment was conducted by using the Faster Region-based Convolutional Neural Networks (R-CNN) algorithm embedded in TensorFlow,6000 images for training dataset from theMIT Places Database (from Scene Recognition), and 600 anonymous dataset images fromconstruction sites for testing. Based on the experiment conducted, the model can detect possible hazardous incident at the construction site with a more than 70% accuracy rate.

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Published

2021-01-24

How to Cite

MadihahMohd Saudi1, Obsatar Sinaga, MohdHaizam Saudi, & Aiman Azhar. (2021). HAZARDOUS DETECTION MODEL AT CONSTRUCTION SITE USING IMAGE DETECTION. PalArch’s Journal of Archaeology of Egypt / Egyptology, 17(10), 3980-3987. Retrieved from https://archives.palarch.nl/index.php/jae/article/view/6041

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