Litcius/Paper detail

Deep learning and citizen science enable automated plant trait predictions from photographs

Christopher Schiller, Sebastian Schmidtlein, Coline C. F. Boonman, Álvaro Moreno‐Martínez, Teja Kattenborn

2021Scientific Reports57 citationsDOIOpen Access PDF

Abstract

Plant functional traits ('traits') are essential for assessing biodiversity and ecosystem processes, but cumbersome to measure. To facilitate trait measurements, we test if traits can be predicted through visible morphological features by coupling heterogeneous photographs from citizen science (iNaturalist) with trait observations (TRY database) through Convolutional Neural Networks (CNN). Our results show that image features suffice to predict several traits representing the main axes of plant functioning. The accuracy is enhanced when using CNN ensembles and incorporating prior knowledge on trait plasticity and climate. Our results suggest that these models generalise across growth forms, taxa and biomes around the globe. We highlight the applicability of this approach by producing global trait maps that reflect known macroecological patterns. These findings demonstrate the potential of Big Data derived from professional and citizen science in concert with CNN as powerful tools for an efficient and automated assessment of Earth's plant functional diversity.

Topics & Concepts

TraitCitizen scienceConvolutional neural networkBiomeBiodiversityComputer scienceArtificial intelligenceData scienceMachine learningDeep learningEcologyEcosystemBiologyProgramming languageBotanySpecies Distribution and Climate ChangeEcology and Vegetation Dynamics StudiesPlant and animal studies