Improvement in Land Cover and Crop Classification based on Temporal Features Learning from Sentinel-2 Data Using Recurrent-Convolutional Neural Network (R-CNN)

被引:86
作者
Mazzia, Vittorio [1 ,2 ,3 ]
Khaliq, Aleem [1 ,2 ]
Chiaberge, Marcello [1 ,2 ]
机构
[1] Politecn Torino, Dept Elect & Telecommun, I-10124 Turin, Italy
[2] Politecn Torino, PIC4SeR, Interdept Ctr Serv Robot, I-10129 Turin, Italy
[3] SmartData PoliTo, Big Data & Data Sci Lab, I-10129 Turin, Italy
来源
APPLIED SCIENCES-BASEL | 2020年 / 10卷 / 01期
关键词
satellite imagery; deep Learning; pixel-based crops classification; recurrent neural networks; convolutional neural networks; WHEAT YIELD ESTIMATION; TIME-SERIES; MODIS DATA; VEGETATION PHENOLOGY; SURFACE PHENOLOGY; FEATURE-SELECTION; IMAGERY; ACCURACY; AREA; PRODUCTIVITY;
D O I
10.3390/app10010238
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Understanding the use of current land cover, along with monitoring change over time, is vital for agronomists and agricultural agencies responsible for land management. The increasing spatial and temporal resolution of globally available satellite images, such as provided by Sentinel-2, creates new possibilities for researchers to use freely available multi-spectral optical images, with decametric spatial resolution and more frequent revisits for remote sensing applications such as land cover and crop classification (LC&CC), agricultural monitoring and management, environment monitoring. Existing solutions dedicated to cropland mapping can be categorized based on per-pixel based and object-based. However, it is still challenging when more classes of agricultural crops are considered at a massive scale. In this paper, a novel and optimal deep learning model for pixel-based LC&CC is developed and implemented based on Recurrent Neural Networks (RNN) in combination with Convolutional Neural Networks (CNN) using multi-temporal sentinel-2 imagery of central north part of Italy, which has diverse agricultural system dominated by economic crop types. The proposed methodology is capable of automated feature extraction by learning time correlation of multiple images, which reduces manual feature engineering and modeling crop phenological stages. Fifteen classes, including major agricultural crops, were considered in this study. We also tested other widely used traditional machine learning algorithms for comparison such as support vector machine SVM, random forest (RF), Kernal SVM, and gradient boosting machine, also called XGBoost. The overall accuracy achieved by our proposed Pixel R-CNN was 96.5%, which showed considerable improvements in comparison with existing mainstream methods. This study showed that Pixel R-CNN based model offers a highly accurate way to assess and employ time-series data for multi-temporal classification tasks.
引用
收藏
页数:23
相关论文
共 82 条
[41]   Gradient-based learning applied to document recognition [J].
Lecun, Y ;
Bottou, L ;
Bengio, Y ;
Haffner, P .
PROCEEDINGS OF THE IEEE, 1998, 86 (11) :2278-2324
[42]   Object-Based Crop Classification with Landsat-MODIS Enhanced Time-Series Data [J].
Li, Qingting ;
Wang, Cuizhen ;
Zhang, Bing ;
Lu, Linlin .
REMOTE SENSING, 2015, 7 (12) :16091-16107
[43]   Evaluation of MODIS and Landsat multiband vegetation indices used for wheat yield estimation in irrigated Indus Basin [J].
Liaqat, Muhammad Usman ;
Cheema, Muhammad Jehanzeb Masud ;
Huang, Wenjiang ;
Mahmood, Talha ;
Zaman, Muhammad ;
Khan, Muhammad Mohsin .
COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2017, 138 :39-47
[44]   Impact of feature selection on the accuracy and spatial uncertainty of per-field crop classification using Support Vector Machines [J].
Loew, F. ;
Michel, U. ;
Dech, S. ;
Conrad, C. .
ISPRS JOURNAL OF PHOTOGRAMMETRY AND REMOTE SENSING, 2013, 85 :102-119
[45]   Object-oriented crop classification using multitemporal ETM plus SLC-off imagery and random forest [J].
Long, John A. ;
Lawrence, Rick L. ;
Greenwood, Mark C. ;
Marshall, Lucy ;
Miller, Perry R. .
GISCIENCE & REMOTE SENSING, 2013, 50 (04) :418-436
[46]   Long-Term Annual Mapping of Four Cities on Different Continents by Applying a Deep Information Learning Method to Landsat Data [J].
Lyu, Haobo ;
Lu, Hui ;
Mou, Lichao ;
Li, Wenyu ;
Wright, Jonathon ;
Li, Xuecao ;
Li, Xinlu ;
Zhu, Xiao Xiang ;
Wang, Jie ;
Yu, Le ;
Gong, Peng .
REMOTE SENSING, 2018, 10 (03)
[47]   Learning a Transferable Change Rule from a Recurrent Neural Network for Land Cover Change Detection [J].
Lyu, Haobo ;
Lu, Hui ;
Mou, Lichao .
REMOTE SENSING, 2016, 8 (06)
[48]   High-Resolution Aerial Image Labeling With Convolutional Neural Networks [J].
Maggiori, Emmanuel ;
Tarabalka, Yuliya ;
Charpiat, Guillaume ;
Alliez, Pierre .
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2017, 55 (12) :7092-7103
[49]   An Automated Method for Annual Cropland Mapping along the Season for Various Globally-Distributed Agrosystems Using High Spatial and Temporal Resolution Time Series [J].
Matton, Nicolas ;
Canto, Guadalupe Sepulcre ;
Waldner, Francois ;
Valero, Silvia ;
Morin, David ;
Inglada, Jordi ;
Arias, Marcela ;
Bontemps, Sophie ;
Koetz, Benjamin ;
Defourny, Pierre .
REMOTE SENSING, 2015, 7 (10) :13208-13232
[50]  
Mellet E, 1996, J NEUROSCI, V16, P6504