# FIP 1.0 soybean data: Insights on soybean growth from eight years of high-throughput image field phenotyping

**Authors:** Beat Keller, Norbert Kirchgessner, Corina Oppliger, Lukas Kronenberg, Lukas Roth, Olivia Zumsteg, Simon Corrado, Frank Liebisch, Helge Aasen, Nicola Storni, Flavian Tschurr, Hansueli Zellweger, Claude-Alain Betrix, Christoph Barendregt, Andreas Hund, Achim Walter

PMC · DOI: 10.1038/s41597-026-06663-z · 2026-02-18

## TL;DR

This paper presents a dataset of soybean images and weather data collected over eight years to study how different soybean varieties respond to changing environmental conditions.

## Contribution

The study introduces a longitudinal dataset combining high-resolution soybean images with hourly weather data to analyze genotype-by-environment interactions.

## Key findings

- The dataset enables detailed analysis of soybean growth dynamics under varying field conditions.
- High spatio-temporal image resolution supports identification of stress-tolerant soybean genotypes.
- The dataset can improve yield prediction and yield stability by understanding genotype-by-environment interactions.

## Abstract

Soybean growth is determined by the interaction of genetic, environmental, and management factors. In the context of future climate and climate extremes, understanding genotype by environment interaction (GxE) will be crucial for selecting resilient breeding lines and optimizing management practices to minimize stress. This requires an in depth elucidation of stressful weather conditions and differing temporal responses of genotypes to those conditions. In field studies, however, the environment is often treated as a static factor, and the specific effects of weather variability on crop growth remain poorly understood. Here, we present a longitudinal dataset comprising 17,247 high-resolution RGB images of soybean breeding lines collected throughout eight years in Eschikon, Switzerland. Top-of-canopy images were acquired throughout the entire growing seasons and complemented by hourly weather data, enabling a comprehensive analysis of soybean growth dynamics under varying field conditions. High spatio-temporal image resolution allows detailed analysis of growth dynamics and GxE, supporting identification of stress-tolerant genotypes to improve yield prediction and yield stability.

## Linked entities

- **Species:** Glycine max (taxon 3847)

## Full-text entities

- **Species:** Glycine max (soybean, species) [taxon 3847]

## Figures

8 figures with captions in the complete paper: https://tomesphere.com/paper/PMC13031312/full.md

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Source: https://tomesphere.com/paper/PMC13031312