Investigating Target Class Influence on Neural Network Compressibility for Energy-Autonomous Avian Monitoring
- URL: http://arxiv.org/abs/2602.17751v1
- Date: Thu, 19 Feb 2026 16:24:33 GMT
- Title: Investigating Target Class Influence on Neural Network Compressibility for Energy-Autonomous Avian Monitoring
- Authors: Nina Brolich, Simon Geis, Maximilian Kasper, Alexander Barnhill, Axel Plinge, Dominik Seuß,
- Abstract summary: We propose running machine learning models on inexpensive microcontroller units (MCUs) directly in the field.<n>We trained and compressed models for various numbers of target classes to assess the detection of multiple bird species.<n>We also provide benchmarking results for different hardware platforms and evaluate the feasibility of deploying energy-autonomous devices.
- Score: 36.85680419418593
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Biodiversity loss poses a significant threat to humanity, making wildlife monitoring essential for assessing ecosystem health. Avian species are ideal subjects for this due to their popularity and the ease of identifying them through their distinctive songs. Traditionalavian monitoring methods require manual counting and are therefore costly and inefficient. In passive acoustic monitoring, soundscapes are recorded over long periods of time. The recordings are analyzed to identify bird species afterwards. Machine learning methods have greatly expedited this process in a wide range of species and environments, however, existing solutions require complex models and substantial computational resources. Instead, we propose running machine learning models on inexpensive microcontroller units (MCUs) directly in the field. Due to the resulting hardware and energy constraints, efficient artificial intelligence (AI) architecture is required. In this paper, we present our method for avian monitoring on MCUs. We trained and compressed models for various numbers of target classes to assess the detection of multiple bird species on edge devices and evaluate the influence of the number of species on the compressibility of neural networks. Our results demonstrate significant compression rates with minimal performance loss. We also provide benchmarking results for different hardware platforms and evaluate the feasibility of deploying energy-autonomous devices.
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