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Main Authors: Li, Wenyuan, Liang, Shunlin, Zhang, Yuxiang, Liu, Liqin, Chen, Keyan, Chen, Yongzhe, Ma, Han, Xu, Jianglei, Ma, Yichuan, Guan, Shikang, Shi, Zhenwei
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.06155
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author Li, Wenyuan
Liang, Shunlin
Zhang, Yuxiang
Liu, Liqin
Chen, Keyan
Chen, Yongzhe
Ma, Han
Xu, Jianglei
Ma, Yichuan
Guan, Shikang
Shi, Zhenwei
author_facet Li, Wenyuan
Liang, Shunlin
Zhang, Yuxiang
Liu, Liqin
Chen, Keyan
Chen, Yongzhe
Ma, Han
Xu, Jianglei
Ma, Yichuan
Guan, Shikang
Shi, Zhenwei
contents 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 image processing. We propose a dual-stream Transformer architecture that synergistically processes these modalities. It coordinates two specialized pathways: a spectral-spatial Transformer extracts fine-grained signatures from hyperspectral EnMAP data, while a temporal Swin Transformer extracts crop growth patterns from Sentinel-2 time series. The designed hierarchical classification head with hierarchical fusion then simultaneously delivers multi-level crop type classification across all taxonomic tiers. Experiments demonstrate that adding hyperspectral EnMAP data to Sentinel-2 time series yields a 4.2% average F1-scores improvement (peaking at 6.3%). Extensive comparisons also confirm our method's higher accuracy over existing deep learning approaches for crop type classification and the consistent benefits of hyperspectral data across varying temporal windows and crop change scenarios. Codes and dataset are available at https://github.com/flyakon/H2Crop.
format Preprint
id arxiv_https___arxiv_org_abs_2506_06155
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle 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
Li, Wenyuan
Liang, Shunlin
Zhang, Yuxiang
Liu, Liqin
Chen, Keyan
Chen, Yongzhe
Ma, Han
Xu, Jianglei
Ma, Yichuan
Guan, Shikang
Shi, Zhenwei
Computer Vision and Pattern Recognition
Machine Learning
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 image processing. We propose a dual-stream Transformer architecture that synergistically processes these modalities. It coordinates two specialized pathways: a spectral-spatial Transformer extracts fine-grained signatures from hyperspectral EnMAP data, while a temporal Swin Transformer extracts crop growth patterns from Sentinel-2 time series. The designed hierarchical classification head with hierarchical fusion then simultaneously delivers multi-level crop type classification across all taxonomic tiers. Experiments demonstrate that adding hyperspectral EnMAP data to Sentinel-2 time series yields a 4.2% average F1-scores improvement (peaking at 6.3%). Extensive comparisons also confirm our method's higher accuracy over existing deep learning approaches for crop type classification and the consistent benefits of hyperspectral data across varying temporal windows and crop change scenarios. Codes and dataset are available at https://github.com/flyakon/H2Crop.
title 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
topic Computer Vision and Pattern Recognition
Machine Learning
url https://arxiv.org/abs/2506.06155