Machine Learning Distinguishes Plant Bioelectric Recordings with and Without Nearby Human Movement
Peter A. Gloor, Moritz Weinbeer

TL;DR
This study uses machine learning to detect small bioelectric changes in plants when humans move nearby, finding a modest but measurable difference.
Contribution
A data-driven method combining bioelectric recordings and machine learning to explore plant responses to nearby human movement.
Findings
Random Forest achieved 62.7% accuracy in distinguishing plant signals with and without nearby human movement.
Plants exposed to repeated human movement showed less negative bioelectric amplitudes.
Individual performer signatures were detectable with 68.2% accuracy, but species classification was only 44.5%.
Abstract
Background: Quantitatively detecting whether plants exhibit measurable bioelectric differences in the presence of nearby human movement remains challenging, in part because plant signals are low-amplitude, slow, and easily confounded by environmental factors. Methods: We recorded bioelectric activity from 2978 plant samples across three species (basil, salad, tomato) using differential electrode pairs (leaf and soil electrodes) sampling at 142 Hz. Two trained performers executed three specific eurythmic gestures near experimental plants while control plants remained isolated. Random Forest and Convolutional Neural Network classifiers were applied to distinguish the control from treatment conditions using engineered features including spectral, temporal, wavelet, and frequency domain characteristics. Results: Random Forest classification achieved 62.7% accuracy (AUC = 0.67)…
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Taxonomy
TopicsPlant and Biological Electrophysiology Studies · Tree Root and Stability Studies · Animal and Plant Science Education
