Cicada Species Recognition Based on Acoustic Signals

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Abstract

Traditional methods used to identify and monitor insect species are time-consuming, costly, and fully dependent on the observer’s ability. This paper presents a deep learning-based cicada species recognition system using acoustic signals to classify the cicada species. The sound recordings of cicada species were collected from different online sources and pre-processed using denoising algorithms. An improved Härmä syllable segmentation method is introduced to segment the audio signals into syllables since the syllables play a key role in identifying the cicada species. After that, a visual representation of the audio signal was obtained using a spectrogram, which was fed to a convolutional neural network (CNN) to perform classification. The experimental results validated the robustness of the proposed method by achieving accuracies ranging from 66.67% to 100%.

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Tey, W. T., Connie, T., Choo, K. Y., & Goh, M. K. O. (2022). Cicada Species Recognition Based on Acoustic Signals. Algorithms, 15(10). https://doi.org/10.3390/a15100358

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