PhenEye – Having an eye on the fingerprint of global change: observing phenology using automated monitoring



iDiv Flexpool Project

Team: Matthias Körschens, Paul Bodesheim, Solveig Franziska Bucher, Christine Römermann, Joachim Denzler

Time period: 2022 to 2024 (and extended to 2025)

Scope

Long-term experiments have been set up to analyse and understand drivers of changes in (plant) biodiversity in response to changes in land-use and/or climate. Only in few experiments, cameras have been established to analyse visual time-series with high temporal resolution. Investigating the variations in phenology is typically done on a weekly basis, and is therefore very time consuming and laborious. In previous research, we have established a system that performs an automated analysis of herbaceous plant community composition from images, comprising a pipeline of several convolutional neural networks (CNNs) trained on image datasets from the web as well as annotated plant cover data. Here, we propose to develop this method further to automatically extract functional, or more specifically, phenological patterns in response to changes in the environment from images to be established at the GCEF. In this project we will (a) automatically extract variations in plant composition and phenology on a daily basis, (b) link these high-resolution data to (small scale) variations in temperature and precipitation induced by the GCEF and (c) better understand the effect of changes in land-use and climate on biodiversity.

Summary

We develop methods to automatically determine the plant species composition and their phenology from images of herbaceous plant communities. The developed methods can extract high-quality research data with a high temporal resolution with little human effort. With data extracted this way, conducting more detailed studies of the plant communities and obtaining valuable novel scientific insights is possible. Furthermore, our methods are currently being extended to automatically extract phenological information from images of herbarium specimens to minimize manual labor when analyzing herbarium data. The developed methods will be available as freely usable web applications to benefit plant ecology researchers worldwide.


Plant community composition analysis and phenology prediction


PhenEye 2.0: exploiting historical Herbarium data for training


Code: Link coming soon!

Publications (including project-related previous work before 2022)
2024
Matthias Körschens, Solveig Franziska Bucher, Paul Bodesheim, Josephine Ulrich, Joachim Denzler, Christine Römermann:
Determining the Community Composition of Herbaceous Species from Images using Convolutional Neural Networks.
Ecological Informatics. 80 : pp. 102516. 2024.
[bibtex] [pdf] [web] [doi] [abstract]
2023
Matthias Körschens, Solveig Franziska Bucher, Christine Römermann, Joachim Denzler:
Improving Data Efficiency for Plant Cover Prediction with Label Interpolation and Monte-Carlo Cropping.
DAGM German Conference on Pattern Recognition (DAGM-GCPR). 2023.
[bibtex] [pdf] [web] [supplementary] [abstract]
Matthias Körschens, Solveig Franziska Bucher, Christine Römermann, Joachim Denzler:
Unified Automatic Plant Cover and Phenology Prediction.
ICCV Workshop on Computer Vision in Plant Phenotyping and Agriculture (CVPPA). 2023.
[bibtex] [pdf] [abstract]
2021
Matthias Körschens, Paul Bodesheim, Christine Römermann, Solveig Franziska Bucher, Mirco Migliavacca, Josephine Ulrich, Joachim Denzler:
Automatic Plant Cover Estimation with Convolutional Neural Networks.
Computer Science for Biodiversity Workshop (CS4Biodiversity), INFORMATIK 2021. Pages 499-516. 2021.
[bibtex] [pdf] [doi] [abstract]
Matthias Körschens, Paul Bodesheim, Christine Römermann, Solveig Franziska Bucher, Mirco Migliavacca, Josephine Ulrich, Joachim Denzler:
Weakly Supervised Segmentation Pretraining for Plant Cover Prediction.
DAGM German Conference on Pattern Recognition (DAGM-GCPR). Pages 589-603. 2021.
[bibtex] [pdf] [doi] [supplementary] [abstract]
2020
Matthias Körschens, Paul Bodesheim, Christine Römermann, Solveig Franziska Bucher, Josephine Ulrich, Joachim Denzler:
Towards Confirmable Automated Plant Cover Determination.
ECCV Workshop on Computer Vision Problems in Plant Phenotyping (CVPPP). 2020.
[bibtex] [pdf] [web] [doi] [supplementary] [abstract]