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aub_admin September 03, 2022 90 Views

IDENTIFY THE BEEHIVE SOUND USING DEEP LEARNING

Shah Jafor Sadeek Quaderi1, Sadia Afrin Labonno2, Sadia Mostafa3 and Shamim Akhter4

1 Dept. of Computer Science, University of Malaya, Kuala Lumpur, Malaysia. ( Lecturer, Dept. of CSE, Asian University of Bangladesh )
2, 3 AISIP Lab, Dept. of CSE, IUBAT, Dhaka, Bangladesh.
4 Dept. of CSE, Stamford University Bangladesh, Dhaka, Bangladesh.

ABSTRACT

Flowers play an essential role in removing the duller from the environment. The life cycle of the flowering plants involves pollination, fertilization, flowering, seed- formation, dispersion, and germination. Honeybees pollinate approximately 75% of all flowering plants. Environmental pollution, climate change, natural landscape demolition, and so on, threaten the natural habitats, thus continuously reducing the number of honeybees. As a result, several researchers are attempting to resolve this issue. Applying acoustic classification to recordings of beehive sounds may be a way of detecting changes within them. In this research, we use deep learning techniques, namely Sequential Neural Network, Convolutional Neural Network, and Recurrent Neural Network, on the recorded sounds to classify bee sounds from the non beehive noises. In addition, we perform a comparative study among some popular non-deep learning techniques, namely Support Vector Machine, Decision Tree, Random Forest, and Naïve Bayes, with the deep learning techniques. The techniques are also verified on the combined recorded sounds (25-75% noises).
KEYWORDS: Beehive sound recognition, Audio data feature extraction, Sequential neural network, Recurrent neural network, Convolutional neural network.