TinyBird-ML: An ultra-low Power Smart Sensor Node for Bird Vocalization Analysis and Syllable Classification
Lukas Schulthess, Steven Marty, Matilde Dirodi, Mariana D. Rocha,, Linus R\"uttimann, Richard H. R. Hahnloser, Michele Magno

TL;DR
TinyBird-ML is a lightweight, low-power wearable sensor for bird vocalization analysis that processes sounds on-device, enabling long battery life and real-time classification with minimal latency.
Contribution
The paper introduces TinyBird-ML, a novel ultra-low power sensor node capable of on-device bird song classification, optimizing battery life and enabling real-time, closed-loop experiments.
Findings
Achieves 25 hours of operation on a single zinc-air battery.
Classifies bird syllables with 7% error rate.
Reduces data transmission by 70% using compression.
Abstract
Animal vocalisations serve a wide range of vital functions. Although it is possible to record animal vocalisations with external microphones, more insights are gained from miniature sensors mounted directly on animals' backs. We present TinyBird-ML; a wearable sensor node weighing only 1.4 g for acquiring, processing, and wirelessly transmitting acoustic signals to a host system using Bluetooth Low Energy. TinyBird-ML embeds low-latency tiny machine learning algorithms for song syllable classification. To optimize battery lifetime of TinyBird-ML during fault-tolerant continuous recordings, we present an efficient firmware and hardware design. We make use of standard lossy compression schemes to reduce the amount of data sent over the Bluetooth antenna, which increases battery lifetime by 70% without negative impact on offline sound analysis. Furthermore, by not transmitting signals…
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