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IoT Edge Acoustic Sensing with a Tiny CNN for Real-Time Detection of Illegal Chainsaw Activity in Forests

Botirjon KarimovSchool of Information and Communication Technology, University of Tasmania, Hobart, TAS, AustraliaA. B. M. Alim Al IslamSchool of Information and Communication Technology, University of Tasmania, Hobart, TAS, AustraliaShirin KarimovaDepartment of artificial intelligence, Tashkent State University of Economics, Tashkent, Uzbekistan
2025
ABI

Аннотация

This study focuses on the capabilities of edge IoT devices for long-term monitoring in forest environments. IoT devices vary in capability, which must be evaluated for acoustic sensing. The main aim of this research is to develop a tiny deep-learning model to detect sound events to identify unauthorized chainsaw activity under dense forest conditions. The system runs entirely on a low-power Raspberry Pi node, USB microphone, and a compact CNN model that operates on log-Mel spectrograms. The audio is pre-processed (noise reduction and normalization), converted to time–frequency features, and classified on the device. Using a small, unbalanced dataset and noisy backgrounds, the model produces reliable segment- and event-level detections in real time. During the event-level evaluation, 15 test cases were assessed, and in each case the system detected multiple chainsaw events. These results indicate that tiny models running on inexpensive edge hardware offer a practical solution for real-time ecoacoustic surveillance and can support scalable, cost-effective forest-protection workflows.

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