Deep Convolutional Neural Network for Mapping Smallholder Agriculture Using High Spatial Resolution Satellite Image

被引:29
作者
Xie, Bin [1 ]
Zhang, Hankui K. [2 ]
Xue, Jie [3 ]
机构
[1] Hangzhou Normal Univ, Inst Remote Sensing & Earth Sci, Hangzhou 311121, Zhejiang, Peoples R China
[2] South Dakota State Univ, Geospatial Sci Ctr Excellence, Brookings, SD 57007 USA
[3] Chinese Univ Hong Kong, Dept Geog & Resource Management, Shatin, Hong Kong, Peoples R China
基金
中国国家自然科学基金;
关键词
deep convolutional neural network (CNN); high spatial resolution; GaoFen-1; smallholder agriculture; LAND-COVER CLASSIFICATION; AUXILIARY DATA; FUSION; SEGMENTATION; CROPS; MODIS;
D O I
10.3390/s19102398
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
In classification of satellite images acquired over smallholder agricultural landscape with complex spectral profiles of various crop types, exploring image spatial information is important. The deep convolutional neural network (CNN), originally designed for natural image recognition in the computer vision field, can automatically explore high level spatial information and thus is promising for such tasks. This study tried to evaluate different CNN structures for classification of four smallholder agricultural landscapes in Heilongjiang, China using pan-sharpened 2 m GaoFen-1 (meaning high resolution in Chinese) satellite images. CNN with three pooling strategies: without pooling, with max pooling and with average pooling, were evaluated and compared with random forest. Two different numbers (70,000 and 290,000) of CNN learnable parameters were examined for each pooling strategy. The training and testing samples were systematically sampled from reference land cover maps to ensure sample distribution proportional to the reference land cover occurrence and included 60,000-400,000 pixels to ensure effective training. Testing sample classification results in the four study areas showed that the best pooling strategy was the average pooling CNN and that the CNN significantly outperformed random forest (2.4-3.3% higher overall accuracy and 0.05-0.24 higher kappa coefficient). Visual examination of CNN classification maps showed that CNN can discriminate better the spectrally similar crop types by effectively exploring spatial information. CNN was still significantly outperformed random forest using training samples that were evenly distributed among classes. Furthermore, future research to improve CNN performance was discussed.
引用
收藏
页数:19
相关论文
共 84 条
  • [11] Deep Learning-Based Classification of Hyperspectral Data
    Chen, Yushi
    Lin, Zhouhan
    Zhao, Xing
    Wang, Gang
    Gu, Yanfeng
    [J]. IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 2014, 7 (06) : 2094 - 2107
  • [12] Cherkassky V, 1997, IEEE Trans Neural Netw, V8, P1564, DOI 10.1109/TNN.1997.641482
  • [13] DeepAnomaly: Combining Background Subtraction and Deep Learning for Detecting Obstacles and Anomalies in an Agricultural Field
    Christiansen, Peter
    Nielsen, Lars N.
    Steen, Kim A.
    Jorgensen, Rasmus N.
    Karstoft, Henrik
    [J]. SENSORS, 2016, 16 (11)
  • [14] Analysis Ready Data: Enabling Analysis of the Landsat Archive
    Dwyer, John L.
    Roy, David P.
    Sauer, Brian
    Jenkerson, Calli B.
    Zhang, Hankui K.
    Lymburner, Leo
    [J]. REMOTE SENSING, 2018, 10 (09)
  • [15] Weed detection in soybean crops using ConvNets
    Ferreira, Alessandro dos Santos
    Freitas, Daniel Matte
    da Silva, Gercina Goncalves
    Pistori, Hemerson
    Folhes, Marcelo Theophilo
    [J]. COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2017, 143 : 314 - 324
  • [16] Mapping global cropland and field size
    Fritz, Steffen
    See, Linda
    McCallum, Ian
    You, Liangzhi
    Bun, Andriy
    Moltchanova, Elena
    Duerauer, Martina
    Albrecht, Fransizka
    Schill, Christian
    Perger, Christoph
    Havlik, Petr
    Mosnier, Aline
    Thornton, Philip
    Wood-Sichra, Ulrike
    Herrero, Mario
    Becker-Reshef, Inbal
    Justice, Chris
    Hansen, Matthew
    Gong, Peng
    Aziz, Sheta Abdel
    Cipriani, Anna
    Cumani, Renato
    Cecchi, Giuliano
    Conchedda, Giulia
    Ferreira, Stefanus
    Gomez, Adriana
    Haffani, Myriam
    Kayitakire, Francois
    Malanding, Jaiteh
    Mueller, Rick
    Newby, Terence
    Nonguierma, Andre
    Olusegun, Adeaga
    Ortner, Simone
    Rajak, D. Ram
    Rocha, Jansle
    Schepaschenko, Dmitry
    Schepaschenko, Maria
    Terekhov, Alexey
    Tiangwa, Alex
    Vancutsem, Christelle
    Vintrou, Elodie
    Wu Wenbin
    van der Velde, Marijn
    Dunwoody, Antonia
    Kraxner, Florian
    Obersteiner, Michael
    [J]. GLOBAL CHANGE BIOLOGY, 2015, 21 (05) : 1980 - 1992
  • [17] Hyperspectral Image Classification Using Convolutional Neural Networks and Multiple Feature Learning
    Gao, Qishuo
    Lim, Samsung
    Jia, Xiuping
    [J]. REMOTE SENSING, 2018, 10 (02)
  • [18] A Review of Image Fusion Algorithms Based on the Super-Resolution Paradigm
    Garzelli, Andrea
    [J]. REMOTE SENSING, 2016, 8 (10): : 1
  • [19] Glorot X., 2011, P 14 INT C ART INT S, P315
  • [20] Optical remotely sensed time series data for land cover classification: A review
    Gomez, Cristina
    White, Joanne C.
    Wulder, Michael A.
    [J]. ISPRS JOURNAL OF PHOTOGRAMMETRY AND REMOTE SENSING, 2016, 116 : 55 - 72