Eurythmic Dancing with Plants -- Measuring Plant Response to Human Body
Movement in an Anthroposophic Environment
- URL: http://arxiv.org/abs/2012.12978v1
- Date: Wed, 23 Dec 2020 21:14:54 GMT
- Title: Eurythmic Dancing with Plants -- Measuring Plant Response to Human Body
Movement in an Anthroposophic Environment
- Authors: Sebastian Duerr, Josephine van Delden, Buenyamin Oezkaya, Peter A.
Gloor
- Abstract summary: In particular, body movement of a human conducting eurythmic dances is correlated with the action potential measured by a plant SpikerBox.
The first experiment shows that our measurement system captures external stimuli identically for different plants.
The second experiment illustrates that the plants' response is correlated to the movements of the dancer.
The third experiment indicates that plants that have been exposed for multiple weeks to eurythmic dancing might respond differently to plants which are exposed for the first time to eurythmic dancing.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper describes three experiments measuring interaction of humans with
garden plants. In particular, body movement of a human conducting eurythmic
dances near the plants (beetroots, tomatoes, lettuce) is correlated with the
action potential measured by a plant SpikerBox, a device measuring the
electrical activity of plants, and the leaf movement of the plant, tracked with
a camera. The first experiment shows that our measurement system captures
external stimuli identically for different plants, validating the measurement
system. The second experiment illustrates that the plants' response is
correlated to the movements of the dancer. The third experiment indicates that
plants that have been exposed for multiple weeks to eurythmic dancing might
respond differently to plants which are exposed for the first time to eurythmic
dancing.
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