Beyond Tracking: Using Deep Learning to Discover Novel Interactions in Biological Swarms
Taeyeong Choi, Benjamin Pyenson, Juergen Liebig, Theodore P. Pavlic

TL;DR
This paper introduces a deep learning approach that predicts collective behaviors in biological swarms directly from video data, bypassing individual tracking and enabling discovery of novel interactions.
Contribution
It presents a method to analyze swarm behavior using system-level predictions and explanatory tools, reducing reliance on costly individual tracking and human feature selection.
Findings
Deep models can predict group states from raw video features.
Models highlight important behaviors like dueling without prior knowledge.
The approach enables discovering new interactions in swarm data.
Abstract
Most deep-learning frameworks for understanding biological swarms are designed to fit perceptive models of group behavior to individual-level data (e.g., spatial coordinates of identified features of individuals) that have been separately gathered from video observations. Despite considerable advances in automated tracking, these methods are still very expensive or unreliable when tracking large numbers of animals simultaneously. Moreover, this approach assumes that the human-chosen features include sufficient features to explain important patterns in collective behavior. To address these issues, we propose training deep network models to predict system-level states directly from generic graphical features from the entire view, which can be relatively inexpensive to gather in a completely automated fashion. Because the resulting predictive models are not based on human-understood…
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Taxonomy
TopicsInsect and Arachnid Ecology and Behavior · Plant and animal studies · Species Distribution and Climate Change
