Репозиторий Евразийского национального университета имени Л.Н. Гумилева
Репозиторий Евразийского национального университета имени Л.Н. Гумилева
Репозиторий Евразийского национального университета имени Л.Н. Гумилева
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  • Научные статьи
  • 01. Публикации в изданиях зарубежных стран
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Fast Detection and Classification of Dangerous Urban Sounds Using Deep Learning

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Автор
Momynkulov, Zeinel
Dosbayev, Zhandos
Suliman, Azizah
Abduraimova, Bayan
Smailov, Nurzhigit
Zhekambayeva, Maigul
Zhamangarin, Dusmat
Дата
2023
Редактор
Computers, Materials & Continua
ISSN
1546-2226
Аннотации
Video analytics is an integral part of surveillance cameras. Compared to video analytics, audio analytics offers several benefits, including less expensive equipment and upkeep expenses. Additionally, the volume of the audio datastream is substantially lower than the video camera datastream, especially concerning real-time operating systems, which makes it less demanding of the data channel’s bandwidth needs. For instance, automatic live video streaming from the site of an explosion and gunshot to the police console using audio analytics technologies would be exceedingly helpful for urban surveillance. Technologies for audio analytics may also be used to analyze video recordings and identify occurrences. This research proposed a deep learning model based on the combination of convolutional neural network (CNN) and recurrent neural network (RNN) known as the CNNRNN approach. The proposed model focused on automatically identifying pulse sounds that indicate critical situations in audio sources. The algorithm’s accuracy ranged from 95% to 81% when classifying noises from incidents, including gunshots, explosions, shattered glass, sirens, cries, and dog barking. The proposed approach can be applied to provide security for citizens in open and closed locations, like stadiums, underground areas, shopping malls, and other places.
URI
http://rep.enu.kz/handle/enu/20499
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Fast-Detection-and-Classification-of-Dangerous-Urban-Sounds-Using-Deep-LearningComputers-Materials-and-Continua.pdf (3.500Mb)
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  • Materials Science[559]
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