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Title Boosting Crop Classification by Hierarchically Fusing Satellite, Rotational, and Contextual Data
Authors Valentín Barriere, Martin Claverie, Maja Schneider, Guido Lemoine, Raphael d'Andrimont
Publication date May 2024
Abstract Accurate early-season crop type classification is crucial
for the
crop production estimation and monitoring of agricultural parcels. However,
the complexity of the plant growth patterns and their spatio-temporal
variability present significant challenges. While current deep
learning-based methods show promise in crop type classification from single-
and multi-modal time series, most existing methods rely on a single
modality, such as satellite optical remote sensing data or crop rotation
patterns. We propose a novel approach to fuse multimodal information into a
model for improved accuracy and robustness across multiple crop seasons and
countries. The approach relies on three modalities used: remote sensing time
series from Sentinel-2 and Landsat 8 observations, parcel crop rotation and
local crop distribution. To evaluate our approach, we release a new
annotated dataset of 7.4 million agricultural parcels in France (FR) and the
Netherlands (NL). We associate each parcel with time-series of surface
reflectance (Red and NIR) and biophysical variables (LAI, FAPAR).
Additionally, we propose a new approach to automatically aggregate crop
types into a hierarchical class structure for meaningful model evaluation
and a novel data-augmentation technique for early-season classification.
Performance of the multimodal approach was assessed at different aggregation
levels in the semantic domain, yielding to various ranges of the number of
classes spanning from 151 to 8 crop types or groups. It resulted in accuracy
ranging from 91% to 95% for the NL dataset and from 85% to 89% for the FR
dataset. Pre-training on a dataset improves transferability between
countries, allowing for cross- domain and label prediction, and robustness
of the performances in a few-shot setting from FR to NL, i.e., when the
domain changes as per with significantly new labels. Our proposed approach
outperforms comparable methods by enabling deep learning methods to use the
often overlooked spatio-temporal context of parcels, resulting in increased
precision and generalization capacity.
Pages article 114110
Volume 305
Journal name Remote Sensing of Environment
Publisher Elsevier Science (Amsterdam, The Netherlands)
Reference URL View reference page