Human Detection in Flood Using Drone

Deivamani.G; Govindhraj.P; Jagadeesh.S; Mohammed Asik.A; Sudarsan.T1

1

Publication Date: 2024/05/22

Abstract: Drowning people in India approximately around 38000 peoples per year leads to dead finally because of, we have insufficient water rescue or timely emergency response to search and rescue team during emergency, also the lack of information to the rescue team about the drowning people place. We should believe that a few seconds' difference could have saved a person’s life. The timely information conveyed to the rescue team is also an important criterion for drowning to dead rate being very higher At first, we make a dataset, which contains many human targets at sea. Then, we improve the algorithm In the feature extraction network, we use the residual module with channel attention mechanism. Finally, on the settings of the raspberry pi Pico with GPS and GSM, we use a linear transformation method to deal with the python generated by clustering algorithm. The detection accuracy of the improved algorithm for human targets at sea is improved, which has a good detection effect. The drone with detecting and alerting with voice message to the Rescue Team at remote end with required all details about the drowning people make sense for faster rescue and save as the highest accuracy. The camera detection of the rescue Drone had a proper in that the range of the active camera and the speed of the video with Wi-Fi to the control room also optimal for the detection to work properly.

Keywords: ESP8266, ANN, Arduino Uno, Python Software, GSM/GPS Module.

DOI: https://doi.org/10.38124/ijisrt/IJISRT24MAY277

PDF: https://ijirst.demo4.arinfotech.co/assets/upload/files/IJISRT24MAY277.pdf

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