![]() |
You need to be logged in to carry this out. If you don't have an account, feel free to create one. |
COOKIES: By using this website you agree that we can place Google Analytics Cookies on your device for performance monitoring. | ![]() |
University of Cambridge > Talks.cam > Energy and Environment Group, Department of CST > Towards Improved Crop Type Classification: a Compact Representation Approach for Smallholder Agriculture (TESSERA application)
![]() Towards Improved Crop Type Classification: a Compact Representation Approach for Smallholder Agriculture (TESSERA application)Add to your list(s) Download to your calendar using vCal
If you have a question about this talk, please contact lyr24. Abstract Satellite-based monitoring of smallholder agriculture is an important tool for food security but existing approaches are neither accessible nor effective for small plot field systems. To address these issues, crop type classification using representations generated by a global foundation model, TESSERA , is compared to best classification approaches in the literature. We present a novel approach to smallholder plots and compare representation based methods to raw data based methods for crop type classification in challenging environments. We find that our representation based approach offers a triple win: 1) consistent and statistically significant performance improvement over current methods, 2) greater simplicity due to the elimination of cloud masking and feature engineering, and 3) the reduction of computational cost. Our representation based approach achieves significantly higher F1 scores in the classification of 7 crop types for small fields in Austria for 5 classes (over 10% improvement in one case) and comparable F1 scores for two classes, and the best representation-based methods use 5% and 8% of compute compared to the best raw data method. These results indicate that representations are an effective approach for crop type classification tasks for small field systems. Bio Madeline Lisaius received BS and MS degrees in Earth Systems with a focus on environmental spatial statistics and remote sensing from Stanford University, Stanford, California, USA as well as MRes degree in Environmental Data Science from the University of Cambridge, Cambridge, UK. She is working towards the PhD in the Department of Computer Science and Technology at the University of Cambridge. She is focused on topics of food security and environmental justice, remote sensing, and machine learning. This talk is part of the Energy and Environment Group, Department of CST series. This talk is included in these lists:
Note that ex-directory lists are not shown. |
Other listsPhotography imagine2027 Commission based business in indiaOther talksExternal Seminar - Jenn Brophy TBC A Bayesian methodology for hybrid degradation prognostics Amortized Bayesian experimental design with sequential Monte Carlo Bayesian Inference Tutorial A snapshot on diverse career trajectories in Statistics and Machine Learning Diffusion model tutorial |