Classification of Land Cover, Forest, and Tree Species Classes with ZiYuan-3 Multispectral and Stereo Data
暂无分享,去创建一个
Erxue Chen | Yaoliang Chen | Zhuli Xie | Guiying Li | Dengsheng Lu | D. Lu | Guiying Li | E. Chen | Yaoliang Chen | Zhuli Xie
[1] Y. Shimabukuro,et al. Mapping tree species in tropical seasonal semi-deciduous forests with hyperspectral and multispectral data , 2016 .
[2] Moses Azong Cho,et al. Mapping tree species composition in South African savannas using an integrated airborne spectral and LiDAR system , 2012 .
[3] D. Lu,et al. A comparative analysis of approaches for successional vegetation classification in the Brazilian Amazon , 2014 .
[4] Qi Chen,et al. Examining effective use of data sources and modeling algorithms for improving biomass estimation in a moist tropical forest of the Brazilian Amazon , 2017, Int. J. Digit. Earth.
[5] André Stumpf,et al. Object-oriented mapping of landslides using Random Forests , 2011 .
[6] M. Batistella,et al. Linear mixture model applied to Amazonian vegetation classification , 2003 .
[7] Michele Dalponte,et al. Tree Species Classification in Boreal Forests With Hyperspectral Data , 2013, IEEE Transactions on Geoscience and Remote Sensing.
[8] B. Markham,et al. Summary of Current Radiometric Calibration Coefficients for Landsat MSS, TM, ETM+, and EO-1 ALI Sensors , 2009 .
[9] Jungho Im,et al. Synergistic use of QuickBird multispectral imagery and LIDAR data for object-based forest species classification , 2010 .
[10] Li Wang,et al. Classification of Small-Scale Eucalyptus Plantations Based on NDVI Time Series Obtained from Multiple High-Resolution Datasets , 2016, Remote. Sens..
[11] Hanqin Tian,et al. Terrestrial carbon balance in tropical Asia: Contribution from cropland expansion and land management , 2013 .
[12] Giles M. Foody,et al. Status of land cover classification accuracy assessment , 2002 .
[13] Karin Schwab,et al. Plantation Forests And Biodiversity Oxymoron Or Opportunity , 2016 .
[14] Caiyun Zhang,et al. Combining object-based texture measures with a neural network for vegetation mapping in the Everglades from hyperspectral imagery , 2012 .
[15] Pieter Kempeneers,et al. Data Fusion of Different Spatial Resolution Remote Sensing Images Applied to Forest-Type Mapping , 2011, IEEE Transactions on Geoscience and Remote Sensing.
[16] Dirk Tiede,et al. Evaluation of Different Machine Learning Algorithms for Scalable Classification of Tree Types and Tree Species Based on Sentinel-2 Data , 2018, Remote. Sens..
[17] Michael J. Collins,et al. Mapping subalpine forest types using networks of nearest neighbour classifiers , 2004 .
[18] Moses Azong Cho,et al. Assessing the utility WorldView-2 imagery for tree species mapping in South African subtropical humid forest and the conservation implications: Dukuduku forest patch as case study , 2015, Int. J. Appl. Earth Obs. Geoinformation.
[19] A. Toppinen,et al. Effects of industrial plantations on ecosystem services and livelihoods: Perspectives of rural communities in China , 2017 .
[20] Xiaoling Chen,et al. Four decades of winter wetland changes in Poyang Lake based on Landsat observations between 1973 and 2013 , 2015 .
[21] Qinghua Guo,et al. Artificial Mangrove Species Mapping Using Pléiades-1: An Evaluation of Pixel-Based and Object-Based Classifications with Selected Machine Learning Algorithms , 2018, Remote. Sens..
[22] Leo Breiman,et al. Random Forests , 2001, Machine Learning.
[23] P. Gong,et al. Object-based Detailed Vegetation Classification with Airborne High Spatial Resolution Remote Sensing Imagery , 2006 .
[24] Zhang Nin. Research on coniferous forest volume estimation model for Wangyedian experimental forest farm , 2013 .
[25] Leo Breiman,et al. Bagging Predictors , 1996, Machine Learning.
[26] Jiyuan Liu,et al. Characterization of forest types in Northeastern China, using multi-temporal SPOT-4 VEGETATION sensor data , 2002 .
[27] Kweku-Muata Osei-Bryson,et al. Post-pruning in decision tree induction using multiple performance measures , 2007, Comput. Oper. Res..
[28] A. Huete,et al. A review of vegetation indices , 1995 .
[29] Barry Gardiner,et al. Comparing the provision of ecosystem services in plantation forests under alternative climate change adaptation management options in Wales , 2015, Regional Environmental Change.
[30] M. Louhaichi,et al. Spatially Located Platform and Aerial Photography for Documentation of Grazing Impacts on Wheat , 2001 .
[31] Johannes Fürnkranz,et al. Pruning Algorithms for Rule Learning , 1997, Machine Learning.
[32] Åsa Persson,et al. Species identification of individual trees by combining high resolution LiDAR data with multi‐spectral images , 2008 .
[33] E. Moran. Land Cover Classification in a Complex Urban-Rural Landscape with Quickbird Imagery. , 2010, Photogrammetric engineering and remote sensing.
[34] Li Yan,et al. An Object-Based Semantic Classification Method for High Resolution Remote Sensing Imagery Using Ontology , 2017, Remote. Sens..
[35] Sandra Lowe,et al. Classification Methods For Remotely Sensed Data , 2016 .
[36] Yajie Wang,et al. Mapping Torreya grandis Spatial Distribution Using High Spatial Resolution Satellite Imagery with the Expert Rules-Based Approach , 2017, Remote. Sens..
[37] Feng Zhong-k. Evaluation on the Woodland Resource Value in Wangyedian Trial Forest Farm , 2014 .
[38] David A. Landgrebe,et al. A survey of decision tree classifier methodology , 1991, IEEE Trans. Syst. Man Cybern..
[39] Dengsheng Lu,et al. Coastal wetland classification with multiseasonal high-spatial resolution satellite imagery , 2018, International Journal of Remote Sensing.
[40] J. Ross Quinlan,et al. Induction of Decision Trees , 1986, Machine Learning.
[41] Laurie A. Chisholm,et al. Classification of Australian Native Forest Species Using Hyperspectral Remote Sensing and Machine-Learning Classification Algorithms , 2014, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing.
[42] Michael A. Lefsky,et al. Review of studies on tree species classification from remotely sensed data , 2016 .
[43] Alexander Siegmund,et al. Automatic land cover analysis for Tenerife by supervised classification using remotely sensed data , 2003 .
[44] R. Hall,et al. Incorporating texture into classification of forest species composition from airborne multispectral images , 2000 .
[45] Yuan Gao,et al. [Study on artificial neural network combined with multispectral remote sensing imagery for forest site evaluation]. , 2013, Guang pu xue yu guang pu fen xi = Guang pu.
[46] D. P. Groeneveld,et al. Broadband vegetation index performance evaluated for a low‐cover environment , 2006 .
[47] Qihao Weng,et al. A survey of image classification methods and techniques for improving classification performance , 2007 .
[48] Xiaoyan Sun,et al. Object-based classification using SPOT-5 imagery for Moso bamboo forest mapping , 2014 .
[49] Luciano Vieira Dutra,et al. Examining Spatial Distribution and Dynamic Change of Urban Land Covers in the Brazilian Amazon Using Multitemporal Multisensor High Spatial Resolution Satellite Imagery , 2017, Remote. Sens..
[50] Dengsheng Lu,et al. Coastal wetland vegetation classification with a Landsat Thematic Mapper image , 2011 .
[51] Martin Brown,et al. Support vector machines for optimal classification and spectral unmixing , 1999 .
[52] M. Batistella,et al. COMPARISON OF LAND-COVER CLASSIFICATION METHODS IN THE BRAZILIAN AMAZON BASIN , 2004 .
[53] Zhenwei Shi,et al. MugNet: Deep learning for hyperspectral image classification using limited samples , 2017, ISPRS Journal of Photogrammetry and Remote Sensing.
[54] Ke Wang,et al. Integration of texture and landscape features into object-based classification for delineating Torreya using IKONOS imagery , 2012 .
[55] Dengsheng Lu,et al. Integration of vegetation inventory data and Landsat TM image for vegetation classification in the western Brazilian Amazon , 2005 .
[56] Zhang Xiangmin,et al. Comparison of pixel‐based and object‐oriented image classification approaches—a case study in a coal fire area, Wuda, Inner Mongolia, China , 2006 .
[57] Haihong Zhu,et al. Land Cover Extraction from High Resolution ZY-3 Satellite Imagery Using Ontology-Based Method , 2016, ISPRS Int. J. Geo Inf..
[58] K. S. Sumam,et al. DEM Generation Using Cartosat-I Stereo Data and its Comparison with Publically Available DEM☆ , 2016 .
[59] Guangxing Wang,et al. Examining Spectral Reflectance Saturation in Landsat Imagery and Corresponding Solutions to Improve Forest Aboveground Biomass Estimation , 2016, Remote. Sens..
[60] Nerissa A. Haby,et al. Application of QuickBird and aerial imagery to detect Pinus radiata in remnant vegetation , 2010 .
[61] Russell G. Congalton,et al. Assessing the accuracy of remotely sensed data : principles and practices , 1998 .
[62] Ruiliang Pu,et al. Conifer species recognition: An exploratory analysis of in situ hyperspectral data , 1997 .
[63] Yaolin Liu,et al. Characterizing land-use classes in remote sensing imagery by shape metrics , 2012 .
[64] Jesús Álvarez-Mozos,et al. Multi-criteria evaluation of topographic correction methods , 2016 .
[65] Karsten Jacobsen,et al. Generation and Validation of High‐Resolution DEMs from Worldview‐2 Stereo Data , 2013 .
[66] Michael T. Manry,et al. Attributes of neural networks for extracting continuous vegetation variables from optical and radar , 1998 .
[67] Bogdan Zagajewski,et al. Comparison of support vector machine, random forest and neural network classifiers for tree species classification on airborne hyperspectral APEX images , 2017 .
[68] V. Karathanassi,et al. A comparison study on fusion methods using evaluation indicators , 2007 .
[69] Lijuan Liu,et al. Detection of Drought-Induced Hickory Disturbances in Western Lin An County, China, Using Multitemporal Landsat Imagery , 2016, Remote. Sens..
[70] Andrew O. Finley,et al. Delineation of forest/nonforest land use classes using nearest neighbor methods , 2004 .
[71] Dengsheng Lu,et al. The roles of textural images in improving land-cover classification in the Brazilian Amazon , 2014 .
[72] Akira Hirano,et al. Mapping from ASTER stereo image data: DEM validation and accuracy assessment , 2003 .
[73] F. J. Cortijo,et al. A comparative study of some non-parametric spectral classifiers. Applications to problems with high-overlapping training sets , 1997 .
[74] Jixian Zhang. Multi-source remote sensing data fusion: status and trends , 2010 .
[75] Patricia Gober,et al. Per-pixel vs. object-based classification of urban land cover extraction using high spatial resolution imagery , 2011, Remote Sensing of Environment.
[76] Fevzi Karsli,et al. Remote sensing of tea plantations using an SVM classifier and pattern-based accuracy assessment technique , 2013 .
[77] Guoqing Sun,et al. Extraction of ground surface elevation from ZY-3 winter stereo imagery over deciduous forested areas , 2015 .
[78] R. DeFries,et al. Classification trees: an alternative to traditional land cover classifiers , 1996 .
[79] Ming Cheng,et al. Tree Classification in Complex Forest Point Clouds Based on Deep Learning , 2017, IEEE Geoscience and Remote Sensing Letters.
[80] Santiago Beguería,et al. Identification of Mangrove Areas by Remote Sensing: The ROC Curve Technique Applied to the Northwestern Mexico Coastal Zone Using Landsat Imagery , 2011, Remote. Sens..
[81] G. Shao,et al. Mapping of boreal vegetation of a temperate mountain in China by multitemporal Landsat TM imagery , 2002 .
[82] P. Litkey,et al. Tree species classification from fused active hyperspectral reflectance and LIDAR measurements. , 2010 .
[83] Lizhe Wang,et al. A Comparison of Machine Learning Algorithms for Mapping of Complex Surface-Mined and Agricultural Landscapes Using ZiYuan-3 Stereo Satellite Imagery , 2016, Remote. Sens..
[84] Brian Johnson,et al. Classifying a high resolution image of an urban area using super-object information , 2013 .
[85] Guiying Li,et al. Comparative analysis of classification algorithms and multiple sensor data for land use/land cover classification in the Brazilian Amazon , 2012 .
[86] Thomas Blaschke,et al. Image Segmentation Methods for Object-based Analysis and Classification , 2004 .
[87] Christina Corbane,et al. Use of high-resolution satellite imagery in an integrated model to predict the distribution of shade coffee tree hybrid zones. , 2010 .
[88] Andreas Christmann,et al. Support vector machines , 2008, Data Mining and Knowledge Discovery Handbook.
[89] Robert M. Haralick,et al. Textural Features for Image Classification , 1973, IEEE Trans. Syst. Man Cybern..
[90] Clement Atzberger,et al. Tree Species Classification with Random Forest Using Very High Spatial Resolution 8-Band WorldView-2 Satellite Data , 2012, Remote. Sens..
[91] Huili Gong,et al. Topographic Correction of ZY-3 Satellite Images and Its Effects on Estimation of Shrub Leaf Biomass in Mountainous Areas , 2014, Remote. Sens..
[92] Lalit Kumar,et al. Comparative assessment of the measures of thematic classification accuracy , 2007 .
[93] S. Reis,et al. Identification of hazelnut fields using spectral and Gabor textural features , 2011 .
[94] C. Brodley,et al. Decision tree classification of land cover from remotely sensed data , 1997 .
[95] L. Bruzzone,et al. Tree species classification in the Southern Alps based on the fusion of very high geometrical resolution multispectral/hyperspectral images and LiDAR data , 2012 .
[96] Shihong Du,et al. Learning selfhood scales for urban land cover mapping with very-high-resolution satellite images , 2016 .
[97] Gang Wang,et al. Deep Learning-Based Classification of Hyperspectral Data , 2014, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing.
[98] Rick L. Lawrence,et al. Classification of remotely sensed imagery using stochastic gradient boosting as a refinement of classification tree analysis , 2004 .
[99] Bangqian Chen,et al. Mapping deciduous rubber plantations through integration of PALSAR and multi-temporal Landsat imagery , 2013 .
[100] Bo Meng,et al. Parameter Selection Algorithm for Support Vector Machine , 2011 .
[101] Heather Reese,et al. C-correction of optical satellite data over alpine vegetation areas: A comparison of sampling strategies for determining the empirical c-parameter , 2011 .
[102] R. Brereton,et al. Support vector machines for classification and regression. , 2010, The Analyst.