Detection of foraging behavior from accelerometer data using U-Net type convolutional networks
Manh Cuong Ng\^o, Raghavendra Selvan, Outi Tervo, Mads Peter, Heide-J{\o}rgensen, Susanne Ditlevsen

TL;DR
This study develops and compares machine learning methods, including a U-Net based deep learning model, to detect narwhal foraging behavior from accelerometer data, enabling ecological insights without relying on acoustic data.
Contribution
It introduces a deep learning approach for prey capture detection from accelerometer data, providing a reliable alternative to acoustic methods for studying marine mammal foraging.
Findings
Deep learning outperformed other models in buzz detection accuracy.
Reliable prey capture detection can be achieved using accelerometer data alone.
Narwhals do not exhibit large jerks during foraging, unlike other marine mammals.
Abstract
Narwhal is one of the most mysterious marine mammals, due to its isolated habitat in the Arctic region. Tagging is a technology that has the potential to explore the activities of this species, where behavioral information can be collected from instrumented individuals. This includes accelerometer data, diving and acoustic data as well as GPS positioning. An essential element in understanding the ecological role of toothed whales is to characterize their feeding behavior and estimate the amount of food consumption. Buzzes are sounds emitted by toothed whales that are related directly to the foraging behaviors. It is therefore of interest to measure or estimate the rate of buzzing to estimate prey intake. The main goal of this paper is to find a way to detect prey capture attempts directly from accelerometer data, and thus be able to estimate food consumption without the need for the…
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