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Crop mapping from image time series: Deep learning with multi-scale label hierarchies

Authors :
Gregor Perich
Konrad Schindler
Constantin Streit
Stefano D'Aronco
Jan Dirk Wegner
Frank Liebisch
Mehmet Ozgur Turkoglu
Source :
Remote Sensing of Environment, 264
Publication Year :
2021
Publisher :
Elsevier BV, 2021.

Abstract

The aim of this paper is to map agricultural crops by classifying satellite image time series. Domain experts in agriculture work with crop type labels that are organised in a hierarchical tree structure, where coarse classes (like orchards) are subdivided into finer ones (like apples, pears, vines, etc.). We develop a crop classification method that exploits this expert knowledge and significantly improves the mapping of rare crop types. The three-level label hierarchy is encoded in a convolutional, recurrent neural network (convRNN), such that for each pixel the model predicts three labels at different level of granularity. This end-to-end trainable, hierarchical network architecture allows the model to learn joint feature representations of rare classes (e.g., apples, pears) at a coarser level (e.g., orchard), thereby boosting classification performance at the fine-grained level. Additionally, labelling at different granularity also makes it possible to adjust the output according to the classification scores; as coarser labels with high confidence are sometimes more useful for agricultural practice than fine-grained but very uncertain labels. We validate the proposed method on a new, large dataset that we make public. ZueriCrop covers an area of 50 km × 48 km in the Swiss cantons of Zurich and Thurgau with a total of 116′000 individual fields spanning 48 crop classes, and 28,000 (multi-temporal) image patches from Sentinel-2. We compare our proposed hierarchical convRNN model with several baselines, including methods designed for imbalanced class distributions. The hierarchical approach performs superior by at least 9.9 percentage points in F1-score.<br />Remote Sensing of Environment, 264<br />ISSN:0034-4257

Details

ISSN :
00344257
Volume :
264
Database :
OpenAIRE
Journal :
Remote Sensing of Environment
Accession number :
edsair.doi.dedup.....97fcef4fdaca5a6739af55ac3e4df5e4
Full Text :
https://doi.org/10.1016/j.rse.2021.112603