Control System for Indoor Safety Measures Using a Faster R-CNN Architecture
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2023-05-24
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MDPI
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: This paper presents a control system for indoor safety measures using a Faster R-CNN
(Region-based Convolutional Neural Network) architecture. The proposed system aims to ensure the
safety of occupants in indoor environments by detecting and recognizing potential safety hazards in
real time, such as capacity control, social distancing, or mask use. Using deep learning techniques,
the system detects these situations to be controlled, notifying the person in charge of the company
if any of these are violated. The proposed system was tested in a real teaching environment at
Rey Juan Carlos University, using Raspberry Pi 4 as a hardware platform together with an Intel
Neural Stick board and a pair of PiCamera RGB (Red Green Blue) cameras to capture images of the
environment and a Faster R-CNN architecture to detect and classify objects within the images. To
evaluate the performance of the system, a dataset of indoor images was collected and annotated for
object detection and classification. The system was trained using this dataset, and its performance
was evaluated based on precision, recall, and F1 score. The results show that the proposed system
achieved a high level of accuracy in detecting and classifying potential safety hazards in indoor
environments. The proposed system includes an efficiently implemented software infrastructure
to be launched on a low-cost hardware platform, which is affordable for any company, regardless
of size or revenue, and it has the potential to be integrated into existing safety systems in indoor
environments such as hospitals, warehouses, and factories, to provide real-time monitoring and alerts
for safety hazards. Future work will focus on enhancing the system’s robustness and scalability to
larger indoor environments with more complex safety hazards.
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Julio Vega. Control system for indoor safety measures using a Faster R-CNN architecture. Electronics 2023, 12(11), May 2023.
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