Development of smart camera systems based on artificial intelligence network for social distance detection to fight against COVID-19

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Abstract

In this work, an artificial intelligence network-based smart camera system prototype, which tracks social distance using a bird's-eye perspective, has been developed. “MobileNet SSD-v3”, “Faster-R-CNN Inception-v2”, “Faster-R-CNN ResNet-50” models have been utilized to identify people in video sequences. The final prototype based on the Faster R-CNN model is an integrated embedded system that detects social distance with the camera. The software developed using the “Nvidia Jetson Nano” development kit and Raspberry Pi camera module calculates all necessary actions in itself, detects social distance violations, makes audible and light warnings, and reports the results to the server. It is predicted that the developed smart camera prototype can be integrated into public spaces within the “sustainable smart cities,” the scope that the world is on the verge of a change.

Original languageEnglish
Article number107610
JournalApplied Soft Computing
Volume110
DOIs
StatePublished - Oct 2021

Keywords

  • Convolutional neural network (CNN)
  • Corona virus (COVID-19)
  • Deep learning
  • Transfer learning

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