CerealNet: A Hybrid Deep Learning Architecture for Cereal Crop Mapping Using Sentinel-2 Time-Series

被引:3
|
作者
Machichi, Mouad Alami [1 ]
El Mansouri, Loubna [1 ]
Imani, Yasmina [2 ]
Bourja, Omar [3 ]
Hadria, Rachid [4 ]
Lahlou, Ouiam [2 ]
Benmansour, Samir [5 ]
Zennayi, Yahya [3 ]
Bourzeix, Francois [3 ]
机构
[1] Agron & Vet Inst Hassan 2, Geomat & Topog Dept, Rabat 10112, Morocco
[2] Agron & Vet Inst Hassan 2, Agron Dept, Rabat 10112, Morocco
[3] Moroccan Fdn Adv Sci Innovat & Res MAScIR, Embedded Syst & AI Dept, Rabat 10112, Morocco
[4] Natl Inst Agr Res, Res Dept, Oujda 60033, Morocco
[5] Domaines Agr, Casablanca 21000, Morocco
来源
INFORMATICS-BASEL | 2022年 / 9卷 / 04期
关键词
crop mapping; CerealNet; spectral similarity; deep learning; LSTM; CNN; time-series; IMAGE CLASSIFICATION; PREDICTION;
D O I
10.3390/informatics9040096
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Remote sensing-based crop mapping has continued to grow in economic importance over the last two decades. Given the ever-increasing rate of population growth and the implications of multiplying global food production, the necessity for timely, accurate, and reliable agricultural data is of the utmost importance. When it comes to ensuring high accuracy in crop maps, spectral similarities between crops represent serious limiting factors. Crops that display similar spectral responses are notorious for being nearly impossible to discriminate using classical multi-spectral imagery analysis. Chief among these crops are soft wheat, durum wheat, oats, and barley. In this paper, we propose a unique multi-input deep learning approach for cereal crop mapping, called "CerealNet". Two time-series used as input, from the Sentinel-2 bands and NDVI (Normalized Difference Vegetation Index), were fed into separate branches of the LSTM-Conv1D (Long Short-Term Memory Convolutional Neural Networks) model to extract the temporal and spectral features necessary for the pixel-based crop mapping. The approach was evaluated using ground-truth data collected in the Gharb region (northwest of Morocco). We noted a categorical accuracy and an F1-score of 95% and 94%, respectively, with minimal confusion between the four cereal classes. CerealNet proved insensitive to sample size, as the least-represented crop, oats, had the highest F1-score. This model was compared with several state-of-the-art crop mapping classifiers and was found to outperform them. The modularity of CerealNet could possibly allow for injecting additional data such as Synthetic Aperture Radar (SAR) bands, especially when optical imagery is not available.
引用
收藏
页数:15
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