Machine vision for low-cost remote control of mosquitoes by power laser

Abstract

In this paper, we present an innovative and effective method for remote monitoring of mosquitoes and their neutralization. We explain in detail how we leverage modern advances in neural networks to use a powerful laser to neutralize mosquitoes. The paper presented the experimental low-cost prototype for mosquito control, which uses a powerful laser to thermally neutralize the mosquitoes. The developed device is controlled by a single-board computer based on the neural network. The paper demonstrated experimental research for mosquito neutralization during which, to maximize approximation to natural conditions, simulation of various working conditions was conducted. The manuscript showed that a low-cost device can be used to kill mosquitoes with a powerful laser.

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Acknowledgements

Sergei Petrovskii (University of Leicester) is appreciated for his comments.

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Correspondence to Rakhmatulin Ildar.

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Ildar, R. Machine vision for low-cost remote control of mosquitoes by power laser. J Real-Time Image Proc (2021). https://doi.org/10.1007/s11554-021-01079-x

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Keywords

  • Mosquito control laser
  • Insect detection
  • Mosquito detection
  • Mosquito neutralization
  • Small object detection
  • Remote object detection