Fine-grained Hierarchical Crop Type Classification from Integrated Hyperspectral EnMAP Data and Multispectral Sentinel-2 Time Series: A Large-scale Dataset and Dual-stream Transformer Method
Wenyuan Li, Shunlin Liang, Yuxiang Zhang, Liqin Liu, Keyan Chen, Yongzhe Chen, Han Ma, Jianglei Xu, Yichuan Ma, Shikang Guan, Zhenwei Shi

TL;DR
This paper introduces a large-scale hierarchical crop dataset combining hyperspectral EnMAP data with Sentinel-2 time series and proposes a dual-stream Transformer model for fine-grained crop classification, significantly improving accuracy.
Contribution
It creates the H2Crop dataset integrating hyperspectral and multispectral data and develops a dual-stream Transformer architecture for hierarchical crop classification.
Findings
Adding hyperspectral data improves F1-score by 4.2%.
The proposed method outperforms existing deep learning approaches.
Hyperspectral data benefits crop classification across different scenarios.
Abstract
Fine-grained crop type classification serves as the fundamental basis for large-scale crop mapping and plays a vital role in ensuring food security. It requires simultaneous capture of both phenological dynamics (obtained from multi-temporal satellite data like Sentinel-2) and subtle spectral variations (demanding nanometer-scale spectral resolution from hyperspectral imagery). Research combining these two modalities remains scarce currently due to challenges in hyperspectral data acquisition and crop types annotation costs. To address these issues, we construct a hierarchical hyperspectral crop dataset (H2Crop) by integrating 30m-resolution EnMAP hyperspectral data with Sentinel-2 time series. With over one million annotated field parcels organized in a four-tier crop taxonomy, H2Crop establishes a vital benchmark for fine-grained agricultural crop classification and hyperspectral…
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Taxonomy
TopicsRemote Sensing in Agriculture · Smart Agriculture and AI · Remote-Sensing Image Classification
