Back to Search Start Over

Learning county from pixels: Corn yield prediction with attention-weighted multiple instance learning

Authors :
Wang, Xiaoyu
Ma, Yuchi
Huang, Qunying
Yang, Zhengwei
Zhang, Zhou
Publication Year :
2023

Abstract

Remote sensing technology has become a promising tool in yield prediction. Most prior work employs satellite imagery for county-level corn yield prediction by spatially aggregating all pixels within a county into a single value, potentially overlooking the detailed information and valuable insights offered by more granular data. To this end, this research examines each county at the pixel level and applies multiple instance learning to leverage detailed information within a county. In addition, our method addresses the "mixed pixel" issue caused by the inconsistent resolution between feature datasets and crop mask, which may introduce noise into the model and therefore hinder accurate yield prediction. Specifically, the attention mechanism is employed to automatically assign weights to different pixels, which can mitigate the influence of mixed pixels. The experimental results show that the developed model outperforms four other machine learning models over the past five years in the U.S. corn belt and demonstrates its best performance in 2022, achieving a coefficient of determination (R2) value of 0.84 and a root mean square error (RMSE) of 0.83. This paper demonstrates the advantages of our approach from both spatial and temporal perspectives. Furthermore, through an in-depth study of the relationship between mixed pixels and attention, it is verified that our approach can capture critical feature information while filtering out noise from mixed pixels.<br />Comment: I am writing to request the withdrawal of my paper submitted to arXiv. Upon further review, I have identified an error in the paper that significantly affects the results and conclusions. To maintain the integrity of the scientific record and prevent the dissemination of incorrect information, I believe it is necessary to withdraw the paper from the archive

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2312.01001
Document Type :
Working Paper