Advancing Plant Biomass Measurements:  Integrating Smartphone-based 3D Scanning Techniques for Enhanced Ecosystem Monitoring

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Authors

Peter Dietrich , Melanie Elias, Peter Dietrich, Stanley Harpole, Christiane Roscher, Jan Bumberger

Abstract

New technological developments open novel possibilities for widely applicable methods of ecosystem analyses. We investigated a novel approach using smartphone-based 3D scanning for non-destructive, high-resolution monitoring of above-ground plant biomass. This method leverages Structure from Motion (SfM) techniques with widely accessible smartphone apps and subsequent computing to generate detailed ecological data. By implementing a streamlined pipeline for point cloud processing and voxel-based analysis, we enable frequent, cost-effective, and accessible monitoring of vegetation structure and plant community biomass. Conducted in long-term experimental grasslands, our study reveals a high correlation (R² up to 0.9) between traditional biomass harvesting and 3D volume estimates derived from smartphone-generated point clouds, validating the method's accuracy and reliability. Additionally, results indicate significant effects of plant species richness and fertilization on biomass production and volume estimates, underscoring the potential for high-resolution temporal and spatial analyses of vegetation dynamics. This method's innovation extends beyond traditional practices with implications for future integration of AI to automate species segmentation, ecological trait extraction, and predictive modeling. The simplicity and accessibility of the smartphone-based approach facilitate broader engagement in ecosystem monitoring, encouraging citizen science participation and enhancing data collection efforts. Future research will make it possible to refine the accuracy of point cloud processing, expand applications across diverse vegetation types, and explore new possibilities in ecological monitoring, modeling, and its application in ecosystem analyses and biodiversity research.

DOI

https://doi.org/10.32942/X2T92X

Subjects

Life Sciences

Keywords

biodiversity, photogrammetry, Scaniverse, vegetation height, Vegetation structure

Dates

Published: 2024-12-07 02:30

Last Updated: 2024-12-09 07:34

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License

CC BY Attribution 4.0 International

Additional Metadata

Language:
English

Conflict of interest statement:
There is no conflict of interest.

Data and Code Availability Statement:
The original image data, the clipped image data, as well as the data processing scripts within a Jupyter Notebook are published under an CC BY 4.0 license at https://doi.org/10.5281/zenodo.14024991 and can be reused accordingly.