Remote Sensing Applications in Sugarcane Cultivation: A Review

A large number of studies have been published addressing sugarcane management and monitoring to increase productivity and production as well as to better understand landscape dynamics and environmental threats. Building on existing reviews which mainly focused on the crop’s spectral behavior, a comprehensive review is provided which considers the progress made using novel data analysis techniques and improved data sources. To complement the available reviews, and to make the large body of research more easily accessible for both researchers and practitioners, in this review (i) we summarized remote sensing applications from 1981 to 2020, (ii) discussed key strengths and weaknesses of remote sensing approaches in the sugarcane context, and (iii) described the challenges and opportunities for future earth observation (EO)-based sugarcane monitoring and management. More than one hundred scientific studies were assessed regarding sugarcane mapping (52 papers), crop growth anomaly detection (11 papers), health monitoring (14 papers), and yield estimation (30 papers). The articles demonstrate that decametric satellite sensors such as Landsat and Sentinel-2 enable a reliable, cost-efficient, and timely mapping and monitoring of sugarcane by overcoming the ground sampling distance (GSD)-related limitations of coarser hectometric resolution data, while offering rich spectral information in the frequently recorded data. The Sentinel-2 constellation in particular provides fine spatial resolution at 10 m and high revisit frequency to support sugarcane management and other applications over large areas. For very small areas, and in particular for up-scaling and calibration purposes, unmanned aerial vehicles (UAV) are also useful. Multi-temporal and multi-source data, together with powerful machine learning approaches such as the random forest (RF) algorithm, are key to providing efficient monitoring and mapping of sugarcane growth, health, and yield. A number of difficulties for sugarcane monitoring and mapping were identified that are also well known for other crops. Those difficulties relate mainly to the often (i) time consuming pre-processing of optical time series to cope with atmospheric perturbations and cloud coverage, (ii) the still important lack of analysis-ready-data (ARD), (iii) the diversity of environmental and growth conditions—even for a given country—under which sugarcane is grown, superimposing non-crop related radiometric information on the observed sugarcane crop, and (iv) the general ill-posedness of retrieval and classification approaches which adds ambiguity to the derived information.

[1]  Volodymyr V. Vasyliev,et al.  Monitoring of Sugarcane Harvest in Brazil Based on Optical and SAR Data , 2020, Remote. Sens..

[2]  W. Zeng,et al.  Improvement of sugarcane yield estimation by assimilating UAV-derived plant height observations , 2020 .

[3]  Yannik Rist,et al.  Fine-scale prediction of biomass and leaf nitrogen content in sugarcane using UAV LiDAR and multispectral imaging , 2020, Int. J. Appl. Earth Obs. Geoinformation.

[4]  Luo Liu,et al.  Mapping sugarcane plantation dynamics in Guangxi, China, by time series Sentinel-1, Sentinel-2 and Landsat images , 2020 .

[5]  Jun Ma,et al.  Estimation of Sugarcane Yield Using a Machine Learning Approach Based on UAV-LiDAR Data , 2020, Remote. Sens..

[6]  O. Vilpoux,et al.  Importance of the sugarcane industry in the formal employment in the state of Mato Grosso do Sul during the period of 2008 to 2014 , 2020 .

[7]  Heather McNairn,et al.  Synthetic Aperture Radar (SAR) image processing for operational space-based agriculture mapping , 2020 .

[8]  K. S. Hari Prasad,et al.  Modelling of sugarcane yield using LISS-IV data based on ground LAI and yield observations , 2020, Geocarto International.

[9]  Stefano Pignatti,et al.  Crop Mapping Using Random Forest and Particle Swarm Optimization based on Multi-Temporal Sentinel-2 , 2020, Remote. Sens..

[10]  Muhammad Moshiur Rahman,et al.  Integrating Landsat-8 and Sentinel-2 Time Series Data for Yield Prediction of Sugarcane Crops at the Block Level , 2020, Remote. Sens..

[11]  A. Singels,et al.  Assessing the fidelity of Landsat-based fAPAR models in two diverse sugarcane growing regions , 2020, Comput. Electron. Agric..

[12]  R. Bhatt,et al.  Prospects of Precision Farming in Sugarcane Agriculture to Harness the Potential Benefits , 2020 .

[13]  Xiaolong Wang,et al.  Sugarcane/soybean intercropping with reduced nitrogen input improves crop productivity and reduces carbon footprint in China. , 2020, The Science of the total environment.

[14]  E. Taira,et al.  Sugar Yield Parameters and Fiber Prediction in Sugarcane Fields Using a Multispectral Camera Mounted on a Small Unmanned Aerial System (UAS) , 2020, Sugar Tech.

[15]  Dehai Zhu,et al.  Enabling the Big Earth Observation Data via Cloud Computing and DGGS: Opportunities and Challenges , 2019, Remote. Sens..

[16]  F. V. Scarpare,et al.  Sugarcane drought detection through spectral indices derived modeling by remote-sensing techniques , 2019, Modeling Earth Systems and Environment.

[17]  Weihua Mo,et al.  Identification of Sugarcane with NDVI Time Series Based on HJ-1 CCD and MODIS Fusion , 2019, Journal of the Indian Society of Remote Sensing.

[18]  Panagiotis G. Sarigiannidis,et al.  A Review on UAV-Based Applications for Precision Agriculture , 2019, Inf..

[19]  Sebastian Böck,et al.  Optimal Input Features for Tree Species Classification in Central Europe Based on Multi-Temporal Sentinel-2 Data , 2019, Remote. Sens..

[20]  Yuanyan Chen,et al.  Mapping sugarcane in complex landscapes by integrating multi-temporal Sentinel-2 images and machine learning algorithms , 2019, Land Use Policy.

[21]  Olena Kavats,et al.  Monitoring Harvesting by Time Series of Sentinel-1 SAR Data , 2019, Remote. Sens..

[22]  A. Liaghat,et al.  OPTIMIZATION OF SUGARCANE HARVEST USING REMOTE SENSING , 2019, The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences.

[23]  Farid Kendoul,et al.  Monitoring sugarcane growth response to varying nitrogen application rates: A comparison of UAV SLAM LiDAR and photogrammetry , 2019, Int. J. Appl. Earth Obs. Geoinformation.

[24]  Yu Han,et al.  Capability of multidate RADARSAT-2 data to identify sugarcane lodging , 2019, Journal of Applied Remote Sensing.

[25]  Vinicius V. Mesquita,et al.  Assessing the pasturelands and livestock dynamics in Brazil, from 1985 to 2017: A novel approach based on high spatial resolution imagery and Google Earth Engine cloud computing , 2019, Remote Sensing of Environment.

[26]  Katia A. Figueroa-Rodríguez,et al.  What Has Been the Focus of Sugarcane Research? A Bibliometric Overview , 2019, International journal of environmental research and public health.

[27]  Jansle Vieira Rocha,et al.  A generalized space-time OBIA classification scheme to map sugarcane areas at regional scale, using Landsat images time-series and the random forest algorithm , 2019, Int. J. Appl. Earth Obs. Geoinformation.

[28]  K. Ennouri,et al.  Remote Sensing: An Advanced Technique for Crop Condition Assessment , 2019, Mathematical Problems in Engineering.

[29]  M. K. Villareal,et al.  Multi-sensor Fusion Workflow for Accurate Classification and Mapping of Sugarcane Crops , 2019, Engineering, Technology & Applied Science Research.

[30]  Federico Filipponi,et al.  Sentinel-1 GRD Preprocessing Workflow , 2019, Proceedings.

[31]  F. Vuolo,et al.  Assimilation of Sentinel-2 Leaf Area Index Data into a Physically-Based Crop Growth Model for Yield Estimation , 2019, Agronomy.

[32]  Nicolás Guillén,et al.  Sugar Cane , 2019, Encyclopedic Dictionary of Archaeology.

[33]  Lorenzo Iannini,et al.  Sugarcane Productivity Mapping through C-Band and L-Band SAR and Optical Satellite Imagery , 2019, Remote. Sens..

[34]  Zhe Zhu,et al.  Current status of Landsat program, science, and applications , 2019, Remote Sensing of Environment.

[35]  Hao Jiang,et al.  Early Season Mapping of Sugarcane by Applying Machine Learning Algorithms to Sentinel-1A/2 Time Series Data: A Case Study in Zhanjiang City, China , 2019, Remote. Sens..

[36]  Dongmei Chen,et al.  Segmentation for Object-Based Image Analysis (OBIA): A review of algorithms and challenges from remote sensing perspective , 2019, ISPRS Journal of Photogrammetry and Remote Sensing.

[37]  J. Molin,et al.  A MEASUREMENT SYSTEM BASED ON LiDAR TECHNOLOGY TO CHARACTERIZE THE CANOPY OF SUGARCANE PLANTS , 2019, Engenharia Agrícola.

[38]  P. Strobl,et al.  Benefits of the free and open Landsat data policy , 2019, Remote Sensing of Environment.

[39]  S. Singh,et al.  Integration of sugarcane production technologies for enhanced cane and sugar productivity targeting to increase farmers’ income: strategies and prospects , 2019, 3 Biotech.

[40]  Patrick Hostert,et al.  Intra-annual reflectance composites from Sentinel-2 and Landsat for national-scale crop and land cover mapping , 2019, Remote Sensing of Environment.

[41]  O. Sahu Assessment of sugarcane industry: Suitability for production, consumption, and utilization , 2018, Annals of Agrarian Science.

[42]  Clement Atzberger,et al.  How much does multi-temporal Sentinel-2 data improve crop type classification? , 2018, Int. J. Appl. Earth Obs. Geoinformation.

[43]  C. Cerri,et al.  Prediction of Sugarcane Yield Based on NDVI and Concentration of Leaf-Tissue Nutrients in Fields Managed with Straw Removal , 2018, Agronomy.

[44]  S. S. Ray,et al.  Remote Sensing-Based Yield Forecasting for Sugarcane (Saccharum officinarum L.) Crop in India , 2018, Journal of the Indian Society of Remote Sensing.

[45]  Jansle Vieira Rocha,et al.  Generalized space-time classifiers for monitoring sugarcane areas in Brazil , 2018, Remote Sensing of Environment.

[46]  O. Austin.,et al.  Inhibitory Potential of Lime Fruit (Citrus aurantitolia) Bark Extract on Mycelial Growth of Colletotrichum falcatum, Causal Organism of Sugercane Red Rot Disease , 2018, Microbiology Research Journal International.

[47]  David P. Roy,et al.  Analysis Ready Data: Enabling Analysis of the Landsat Archive , 2018, Remote. Sens..

[48]  Matheus Pinheiro Ferreira,et al.  Landsat-Based Land Use Change Assessment in the Brazilian Atlantic Forest: Forest Transition and Sugarcane Expansion , 2018, Remote. Sens..

[49]  Alindomar Lacerda Silva,et al.  Landsat-Based Land Use Change Assessment in the Brazilian Atlantic Forest: Forest Transition and Sugarcane Expansion , 2018, Remote Sensing.

[50]  Muqing Zhang,et al.  Sugarcane Production in China , 2018 .

[51]  P. Miphokasap,et al.  Estimations of Nitrogen Concentration in Sugarcane Using Hyperspectral Imagery , 2018 .

[52]  M. Starek,et al.  Using Multispectral Imagery to Map Spatially Variable Sugarcane Aphid1 Infestations in Sorghum , 2018, Southwestern Entomologist.

[53]  N. Imai,et al.  A STUDY ON THE EFFECTS OF VIEWING ANGLE VARIATION IN SUGARCANE RADIOMETRIC MEASURES , 2018 .

[54]  Daniel Garbellini Duft,et al.  The potential for RGB images obtained using unmanned aerial vehicle to assess and predict yield in sugarcane fields , 2018 .

[55]  S. Tiwari,et al.  Mineral Nutrition in Plants and its Management in Soil , 2018 .

[56]  Kasper Johansen,et al.  Using GeoEye-1 Imagery for Multi-Temporal Object-Based Detection of Canegrub Damage in Sugarcane Fields in Queensland, Australia , 2018 .

[57]  R. Lamparelli,et al.  Intensity of land use changes in a sugarcane expansion region, Brazil , 2018 .

[58]  R. Lal,et al.  Sustainability of sugarcane production in Brazil. A review , 2018, Agronomy for Sustainable Development.

[59]  Sarawut Ninsawat,et al.  Pre-harvest Sugarcane Yield Estimation Using UAV-Based RGB Images and Ground Observation , 2018, Sugar Tech.

[60]  Prathuang Usaborisut Progress in Mechanization of Sugarcane Farms in Thailand , 2018, Sugar Tech.

[61]  T. Chaisan,et al.  Sugar Industry and Utilization of Its By-products in Thailand: An Overview , 2018, Sugar Tech.

[62]  David P. Roy,et al.  Demonstration of Percent Tree Cover Mapping Using Landsat Analysis Ready Data (ARD) and Sensitivity with Respect to Landsat ARD Processing Level , 2018, Remote. Sens..

[63]  J. L. Carvalho,et al.  The Arrangement and Spacing of Sugarcane Planting Influence Root Distribution and Crop Yield , 2018, BioEnergy Research.

[64]  Eija Honkavaara,et al.  Radiometric block adjustment of hyperspectral image blocks in the Brazilian environment , 2018 .

[65]  Damien Arvor,et al.  Remote Sensing and Cropping Practices: A Review , 2018, Remote. Sens..

[66]  Michelle Cristina Araújo Picoli,et al.  Identificação de eventos de seca em cana-de-açúcar com base em índices de seca derivados do sensor Modis , 2017 .

[67]  Rubens A. C. Lamparelli,et al.  Mapping skips in sugarcane fields using object-based analysis of unmanned aerial vehicle (UAV) images , 2017, Comput. Electron. Agric..

[68]  Walter Rossi Cervi,et al.  Mapping and evaluating sugarcane expansion in Brazil’s savanna using MODIS and intensity analysis: a case-study from the state of Tocantins , 2017 .

[69]  N. Ebecken,et al.  Sugarcane yield prediction in Brazil using NDVI time series and neural networks ensemble , 2017 .

[70]  Peijun Du,et al.  A review of supervised object-based land-cover image classification , 2017 .

[71]  James H. Williams,et al.  Crop Parameters for Modeling Sugarcane under Rainfed Conditions in Mexico , 2017 .

[72]  R. Confalonieri,et al.  Forecasting sugarcane yields using agro-climatic indicators and Canegro model: A case study in the main production region in Brazil , 2017 .

[73]  Rubens Augusto Camargo Lamparelli,et al.  Height estimation of sugarcane using an unmanned aerial system (UAS) based on structure from motion (SfM) point clouds , 2017 .

[74]  Luís Pádua,et al.  UAS, sensors, and data processing in agroforestry: a review towards practical applications , 2017 .

[75]  Yu Wang,et al.  Development of a Three-Dimensional Ray-Tracing Model of Sugarcane Canopy Photosynthesis and Its Application in Assessing Impacts of Varied Row Spacing , 2017, BioEnergy Research.

[76]  Hamilton Jorge de Azevedo,et al.  Factors limiting the implementation of mechanical harvesting of sugarcane in Campos dos Goytacazes, RJ, Brazil , 2017 .

[77]  Amit Kumar Verma,et al.  Sugarcane crop identification from LISS IV data using ISODATA, MLC, and indices based decision tree approach , 2017, Arabian Journal of Geosciences.

[78]  L. Rodrigues,et al.  Representation of harmonic cycles of Modis time series for the analysis of sugarcane cultivation , 2016 .

[79]  Clement Atzberger,et al.  Smoothing and gap-filling of high resolution multi-spectral time series: Example of Landsat data , 2016, Int. J. Appl. Earth Obs. Geoinformation.

[80]  Clement Atzberger,et al.  Data Service Platform for Sentinel-2 Surface Reflectance and Value-Added Products: System Use and Examples , 2016, Remote. Sens..

[81]  Jackapon Sunthornvarabhas,et al.  The Current Status of Sugar Industry and By-products in Thailand , 2016, Sugar Tech.

[82]  P. Sukyai,et al.  Research and Development Prospects for Sugarcane and Sugar Industry in Thailand , 2016, Sugar Tech.

[83]  Shabbir H. Gheewala,et al.  Sustainability of sugarcane cultivation: case study of selected sites in north-eastern Thailand , 2016 .

[84]  Abd Ali Naseri,et al.  Assessing the accuracy of hyperspectral and multispectral satellite imagery for categorical and Quantitative mapping of salinity stress in sugarcane fields , 2016, Int. J. Appl. Earth Obs. Geoinformation.

[85]  B. Scanlon,et al.  Sugarcane land use and water resources assessment in the expansion area in Brazil , 2016 .

[86]  Jon Atli Benediktsson,et al.  Big Data for Remote Sensing: Challenges and Opportunities , 2016, Proceedings of the IEEE.

[87]  A. J. Huerta,et al.  Leaf growth and canopy development of three sugarcane genotypes under high temperature rainfed conditions in Northeastern Mexico. , 2016 .

[88]  Jinsong Chen,et al.  Potential of RADARSAT-2 data on identifying sugarcane lodging caused by typhoon , 2016, 2016 Fifth International Conference on Agro-Geoinformatics (Agro-Geoinformatics).

[89]  P. Thenkabail,et al.  A sweet deal? Sugarcane, water and agricultural transformation in Sub-Saharan Africa , 2016 .

[90]  Agustin Lobo,et al.  Mapping Crop Planting Quality in Sugarcane from UAV Imagery: A Pilot Study in Nicaragua , 2016, Remote. Sens..

[91]  J. P. Veiga,et al.  Spatial variability of sugarcane row gaps: measurement and mapping , 2016 .

[92]  M. Claverie,et al.  Preliminary analysis of the performance of the Landsat 8/OLI land surface reflectance product. , 2016, Remote sensing of environment.

[93]  Raul Shiso Toma,et al.  Assessment of sugarcane harvesting residue effects on soil spectral behavior , 2016 .

[94]  Mariana Belgiu,et al.  Random forest in remote sensing: A review of applications and future directions , 2016 .

[95]  C. Atzberger,et al.  First Experience with Sentinel-2 Data for Crop and Tree Species Classifications in Central Europe , 2016, Remote. Sens..

[96]  Márcia Azanha Ferraz Dias de Moraes,et al.  Socio-economic impacts of Brazilian sugarcane industry , 2015 .

[97]  Shiquan Zhong,et al.  Object-Oriented Classification of Sugarcane Using Time-Series Middle-Resolution Remote Sensing Data Based on AdaBoost , 2015, PloS one.

[98]  A. Bégué,et al.  Agricultural systems studies using remote sensing , 2015 .

[99]  Clement Atzberger,et al.  Self-Guided Segmentation and Classification of Multi-Temporal Landsat 8 Images for Crop Type Mapping in Southeastern Brazil , 2015, Remote. Sens..

[100]  Agnès Bégué,et al.  Mapping Cropping Practices of a Sugarcane-Based Cropping System in Kenya Using Remote Sensing , 2015, Remote. Sens..

[101]  Duli Zhao,et al.  Climate Change and Sugarcane Production: Potential Impact and Mitigation Strategies , 2015 .

[102]  Huihui Zhang,et al.  Satellite-based crop coefficient and regional water use estimates for Hawaiian sugarcane , 2015 .

[103]  Peijun Du,et al.  Random Forest and Rotation Forest for fully polarized SAR image classification using polarimetric and spatial features , 2015 .

[104]  A. S. Belward,et al.  Who launched what, when and why; trends in global land-cover observation capacity from civilian earth observation satellites , 2015 .

[105]  Qingquan Li,et al.  Sugarcane Mapping in Tillering Period by Quad-Polarization TerraSAR-X Data , 2015, IEEE Geoscience and Remote Sensing Letters.

[106]  Felipe Ferreira Bocca,et al.  When do I want to know and why? Different demands on sugarcane yield predictions , 2015 .

[107]  Y. Hanboonsong,et al.  Sugarcane White Leaf Disease Incidences and Population Dynamic of Leafhopper Insect Vectors in Sugarcane Plantations in Northeast Thailand. , 2015, Pakistan journal of biological sciences : PJBS.

[108]  Yang‐Rui Li,et al.  Sugarcane Agriculture and Sugar Industry in China , 2015, Sugar Tech.

[109]  J. Molin,et al.  Comparison of crop canopy reflectance sensors used to identify sugarcane biomass and nitrogen status , 2015, Precision Agriculture.

[110]  Y. Shimabukuro,et al.  Forest dynamics and land-use transitions in the Brazilian Atlantic Forest: the case of sugarcane expansion , 2015, Regional Environmental Change.

[111]  S. Freitas,et al.  Pre-harvest sugarcane burning emission inventories based on remote sensing data in the state of São Paulo, Brazil , 2014 .

[112]  Henry Scheyvens,et al.  An ensemble pansharpening approach for finer-scale mapping of sugarcane with Landsat 8 imagery , 2014, Int. J. Appl. Earth Obs. Geoinformation.

[113]  R. Lamparelli,et al.  The use of ALOS/PALSAR data for estimating sugarcane productivity , 2014 .

[114]  Julien Morel,et al.  Coupling a sugarcane crop model with the remotely sensed time series of fIPAR to optimise the yield estimation , 2014 .

[115]  C. Atzberger,et al.  Evaluation of semi-empirical BRDF models inverted against multi-angle data from a digital airborne frame camera for enhancing forest type classification , 2014 .

[116]  Julien Morel,et al.  Toward a Satellite-Based System of Sugarcane Yield Estimation and Forecasting in Smallholder Farming Conditions: A Case Study on Reunion Island , 2014, Remote. Sens..

[117]  N. R. Patel,et al.  Mapping a Specific Crop—A Temporal Approach for Sugarcane Ratoon , 2014, Journal of the Indian Society of Remote Sensing.

[118]  P. Sentelhas,et al.  Climatic effects on sugarcane ripening under the influence of cultivars and crop age , 2013 .

[119]  S. R. M. Oliveira,et al.  Técnicas de mineração de dados para identificação de áreas com cana-de-açúcar em imagens Landsat 5 , 2013 .

[120]  A. Ramoelo,et al.  Determining the Best Optimum Time for Predicting Sugarcane Yield Using Hyper-Temporal Satellite Imagery , 2013 .

[121]  Edson Eyji Sano,et al.  Effect of sugarcane-planting row directions on ALOS/PALSAR satellite images , 2013 .

[122]  Agnès Bégué,et al.  Forecasting Regional Sugarcane Yield Based on Time Integral and Spatial Aggregation of MODIS NDVI , 2013, Remote. Sens..

[123]  Abd Ali Naseri,et al.  stimating salinity stress in sugarcane fields with spaceborne hyperspectral egetation indices , 2012 .

[124]  Bettina Baruth,et al.  Enhanced Processing of 1-km Spatial Resolution fAPAR Time Series for Sugarcane Yield Forecasting and Monitoring , 2013, Remote. Sens..

[125]  Clement Atzberger,et al.  Advances in Remote Sensing of Agriculture: Context Description, Existing Operational Monitoring Systems and Major Information Needs , 2013, Remote. Sens..

[126]  Elfatih M. Abdel-Rahman,et al.  Random forest regression and spectral band selection for estimating sugarcane leaf nitrogen concentration using EO-1 Hyperion hyperspectral data , 2013 .

[127]  Daniel Alves Aguiar,et al.  A Web Platform Development to Perform Thematic Accuracy Assessment of Sugarcane Mapping in South-Central Brazil , 2012, Remote. Sens..

[128]  Clement Atzberger,et al.  Object Based Image Analysis and Data Mining applied to a remotely sensed Landsat time-series to map sugarcane over large areas , 2012 .

[129]  Jurandir Zullo,et al.  Analysis of NDVI time series using cross-correlation and forecasting methods for monitoring sugarcane fields in Brazil , 2012 .

[130]  Masahiko Nagai,et al.  Estimating Canopy Nitrogen Concentration in Sugarcane Using Field Imaging Spectroscopy , 2012, Remote. Sens..

[131]  Josh Lofton,et al.  Estimating Sugarcane Yield Potential Using an In-Season Determination of Normalized Difference Vegetative Index , 2012, Sensors.

[132]  Matthias Drusch,et al.  Sentinel-2: ESA's Optical High-Resolution Mission for GMES Operational Services , 2012 .

[133]  Malcolm Davidson,et al.  GMES Sentinel-1 mission , 2012 .

[134]  H. Jones,et al.  Remote Sensing of Vegetation: Principles, Techniques, and Applications , 2010 .

[135]  M. Caputo,et al.  Ripening and the Use of Ripeners for Better Sugarcane Management , 2012 .

[136]  Clement Atzberger,et al.  Potential of Multi-Angular Data Derived From a Digital Aerial Frame Camera for Forest Classification , 2012, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing.

[137]  G. Muthusamy,et al.  Wider Row Spacing in Sugarcane: A Socio-economic Performance Analysis , 2012, Sugar Tech.

[138]  Nitin K. Tripathi,et al.  Inter-Sensor Comparison between THEOS and Landsat 5 TM Data in a Study of Two Crops Related to Biofuel in Thailand , 2012, Remote. Sens..

[139]  C. Kucharik,et al.  A biophysical model of Sugarcane growth , 2012 .

[140]  Daniel Alves Aguiar,et al.  Remote Sensing Images in Support of Environmental Protocol: Monitoring the Sugarcane Harvest in São Paulo State, Brazil , 2011, Remote. Sens..

[141]  Nirbhow Jap Singh,et al.  Cropping pattern of Uttar Pradesh using IRS-P6 (AWiFS) data , 2011 .

[142]  Jansle Vieira Rocha,et al.  Sugarcane yield estimates using time series analysis of spot vegetation images , 2011 .

[143]  V. Lebourgeois,et al.  Spatio-temporal variability of sugarcane fields and recommendations for yield forecast using NDVI , 2010 .

[144]  Nicolas Baghdadi,et al.  Multitemporal Observations of Sugarcane by TerraSAR-X Images , 2010, Sensors.

[145]  E. Abdel-Rahman,et al.  Potential of spectroscopic data sets for sugarcane thrips (Fulmekiola serrata Kobus) damage detection , 2010 .

[146]  Daniel Alves Aguiar,et al.  Studies on the Rapid Expansion of Sugarcane for Ethanol Production in São Paulo State (Brazil) Using Landsat Data , 2010, Remote. Sens..

[147]  S. Robinson,et al.  Food Security: The Challenge of Feeding 9 Billion People , 2010, Science.

[148]  Elfatih M. Abdel-Rahman,et al.  Estimation of sugarcane leaf nitrogen concentration using in situ spectroscopy , 2010, Int. J. Appl. Earth Obs. Geoinformation.

[149]  H. McNulty,et al.  Is Sugar Consumption Detrimental to Health? A Review of the Evidence 1995—2006 , 2009, Critical reviews in food science and nutrition.

[150]  A. Bégué,et al.  Integrating SPOT-5 time series, crop growth modeling and expert knowledge for monitoring agricultural practices — The case of sugarcane harvest on Reunion Island , 2009 .

[151]  Daniel Alves Aguiar,et al.  Remote sensing images for monitoring the sugarcane harvest , 2009 .

[152]  Nicolas Baghdadi,et al.  Potential of SAR sensors TerraSAR-X, ASAR/ENVISAT and PALSAR/ALOS for monitoring sugarcane crops on Reunion Island , 2009 .

[153]  Simoes,et al.  Orbital Spectral Variables, Growth Analysis And Sugarcane Yield [variáveis Espectrais Orbitais, Indicadoras De Desenvolvimento E Produtividade Da Cana-de-açúcar] , 2009 .

[154]  A. Garside,et al.  Row spacing and planting density effects on the growth and yield of sugarcane. 1. Responses in fumigated and non-fumigated soil , 2009 .

[155]  A. Garside,et al.  Row spacing and planting density effects on the growth and yield of sugarcane. 3. Responses with different cultivars , 2009 .

[156]  D. Kromhout Sugar , 2009, Medical History.

[157]  H. Franco,et al.  Root system distribution of sugar cane as related to nitrogen fertilization, evaluated by two methods: monolith and probes , 2009 .

[158]  Hui Lin,et al.  Monitoring Sugarcane Growth Using ENVISAT ASAR Data , 2009, IEEE Transactions on Geoscience and Remote Sensing.

[159]  L. Nielsen,et al.  An environmental life cycle assessment comparing Australian sugarcane with US corn and UK sugar beet as producers of sugars for fermentation. , 2008 .

[160]  Brian Johnson,et al.  Object-based target search using remotely sensed data: A case study in detecting invasive exotic Australian Pine in south Florida , 2008 .

[161]  G. Hay,et al.  Object-Based Image Analysis , 2008 .

[162]  Elfatih M. Abdel-Rahman,et al.  The application of remote sensing techniques to sugarcane (Saccharum spp. hybrid) production: a review of the literature , 2008 .

[163]  Agnès Bégué,et al.  Multi-time scale analysis of sugarcane within-field variability: improved crop diagnosis using satellite time series? , 2008, Precision Agriculture.

[164]  N. R. Rao,et al.  RETRACTED ARTICLE: Development of a crop‐specific spectral library and discrimination of various agricultural crop varieties using hyperspectral imagery , 2008 .

[165]  J. Allison,et al.  Why does sugarcane (Saccharum sp. hybrid) grow slowly , 2007 .

[166]  O. Hagolle,et al.  LAI, fAPAR and fCover CYCLOPES global products derived from VEGETATION: Part 1: Principles of the algorithm , 2007 .

[167]  K. Singh,et al.  Improving quality of sugarcane-growing soils by organic amendments under subtropical climatic conditions of India , 2007, Biology and Fertility of Soils.

[168]  Wim Turkenburg,et al.  The sustainability of Brazilian ethanol - an assessment of the possibilities of certified production , 2007 .

[169]  N. Tejera,et al.  Comparative analysis of physiological characteristics and yield components in sugarcane cultivars , 2007 .

[170]  Y. L. Everingham,et al.  Advanced satellite imagery to classify sugarcane crop characteristics , 2007, Agronomy for Sustainable Development.

[171]  C. R. de Souza Filho,et al.  ASTER and Landsat ETM+ images applied to sugarcane yield forecast , 2006 .

[172]  N. R. Patel,et al.  Remote sensing of regional yield assessment of wheat in Haryana, India , 2006 .

[173]  S. Solomon,et al.  Potential of developing sugarcane by-product based industries in India , 2006, Sugar Tech.

[174]  T. Painter,et al.  Reflectance quantities in optical remote sensing - definitions and case studies , 2006 .

[175]  José Alexandre Melo Demattê,et al.  Discrimination of sugarcane varieties using Landsat 7 ETM+ spectral data , 2006 .

[176]  S. Ghosh,et al.  Estimation and comparison of leaf area index of agricultural crops using irs liss-III and EO-1 hyperion images , 2006 .

[177]  Lênio Soares Galvão,et al.  The influence of spectral resolution on discriminating Brazilian sugarcane varieties , 2006 .

[178]  Bernardo Friedrich Theodor Rudorff,et al.  Multi‐temporal analysis of MODIS data to classify sugarcane crop , 2006 .

[179]  Randy L. Raper,et al.  Agricultural traffic impacts on soil , 2005 .

[180]  T. Sakamoto,et al.  A crop phenology detection method using time-series MODIS data , 2005 .

[181]  S. Asokan,et al.  Effect of nitrogen levels and row spacing on yield, ccs and nitrogen uptake in different sugarcane varieties , 2005, Sugar Tech.

[182]  Rubens Augusto Camargo Lamparelli,et al.  Spectral variables, growth analysis and yield of sugarcane , 2005 .

[183]  Mahesh Pal,et al.  Random forest classifier for remote sensing classification , 2005 .

[184]  M. Scarpari,et al.  Sugarcane maturity estimation through edaphic-climatic parameters , 2004 .

[185]  A. C. Xavier,et al.  Mapping leaf area index through spectral vegetation indices in a subtropical watershed , 2004 .

[186]  Armando Apan,et al.  Detecting sugarcane ‘orange rust’ disease using EO-1 Hyperion hyperspectral imagery , 2004 .

[187]  C. J. Gers,et al.  Remotely sensed sugarcane phenological characteristics at Umfolozi South Africa , 2003, IGARSS 2003. 2003 IEEE International Geoscience and Remote Sensing Symposium. Proceedings (IEEE Cat. No.03CH37477).

[188]  M. S. Moran,et al.  Remote Sensing for Crop Management , 2003 .

[189]  M. S. Bhullar,et al.  Effect of method and density of planting on growth and yield of late planted sugarcane , 2002, Sugar Tech.

[190]  G. Shaw,et al.  Signal processing for hyperspectral image exploitation , 2002, IEEE Signal Process. Mag..

[191]  Leo Breiman,et al.  Random Forests , 2001, Machine Learning.

[192]  Klaus I. Itten,et al.  A field goniometer system (FIGOS) for acquisition of hyperspectral BRDF data , 1999, IEEE Trans. Geosci. Remote. Sens..

[193]  S. Sandmeier,et al.  Physical Mechanisms in Hyperspectral BRDF Data of Grass and Watercress , 1998 .

[194]  M. S. Moran,et al.  Opportunities and limitations for image-based remote sensing in precision crop management , 1997 .

[195]  D. A. Teruel,et al.  Sugarcane leaf area index modeling under different soil water conditions , 1997 .

[196]  Robert P. Wiedenfeld,et al.  Effects of irrigation and N fertilizer application on sugarcane yield and quality. , 1995 .

[197]  A. Fung Microwave Scattering and Emission Models and their Applications , 1994 .

[198]  Thomas F. Eck,et al.  Reflectance anisotropy for a spruce-hemlock forest canopy , 1994 .

[199]  Stephan J. Maas,et al.  Remote sensing and crop production models: present trends , 1992 .

[200]  Bernardo Friedrich Theodor Rudorff,et al.  Yield estimation of sugarcane based on agrometeorological-spectral models , 1990 .

[201]  Richard K. Moore,et al.  Radar remote sensing and surface scattering and emission theory , 1986 .

[202]  G. Campbell,et al.  Simple equation to approximate the bidirectional reflectance from vegetative canopies and bare soil surfaces. , 1985, Applied optics.

[203]  Antonio R. Pereira,et al.  Climatic conditioning of flowering induction in sugarcane , 1983 .

[204]  B. Hapke,et al.  Bidirectional reflectance spectroscopy: 2. Experiments and observations , 1981 .

[205]  B. Hapke Bidirectional reflectance spectroscopy: 1. Theory , 1981 .

[206]  Jaturong Som-ard,et al.  Integration of RGB-based vegetation index, crop surface model and object-based image analysis approach for sugarcane yield estimation using unmanned aerial vehicle , 2021, Comput. Electron. Agric..

[207]  Ralf Wieland,et al.  The Use of Multi-temporal Spectral Information to Improve the Classification of Agricultural Crops in Landscapes , 2020 .

[208]  V. K. Pachghare,et al.  Application of Machine Learning on Remote Sensing Data for Sugarcane Crop Classification: A Review , 2020 .

[209]  J. Som-ard Rice Security Assessment Using Geo-Spatial Analysis , 2020 .

[210]  Muhammad Zeeshan,et al.  On the Performance of Temporal Stacking and Vegetation Indices for Detection and Estimation of Tobacco Crop , 2020, IEEE Access.

[211]  J. P. Cobeña Cevallos,et al.  Convolutional Neural Network in the Recognition of Spatial Images of Sugarcane Crops in the Troncal Region of the Coast of Ecuador , 2019, Procedia Computer Science.

[212]  Sandeep Kumar Singla,et al.  Extraction of Crop Information from Reconstructed Landsat Data in Himalayan Foothills Region , 2018 .

[213]  Um Rao Mogili,et al.  Review on Application of Drone Systems in Precision Agriculture , 2018 .

[214]  M. Schmer,et al.  Sugarcane straw removal effects on plant growth and stalk yield , 2018 .

[215]  M. Kubát An Introduction to Machine Learning , 2017, Springer International Publishing.

[216]  Heather McNairn,et al.  A Review of Multitemporal Synthetic Aperture Radar (SAR) for Crop Monitoring , 2016 .

[217]  The future of food and agriculture: Trends and challenges , 2016 .

[218]  Navnit Kumar,et al.  Response of sugarcane (Saccharum spp. hybrid complex) varieties to various planting geometry , 2014 .

[219]  Michael E. Schaepman,et al.  Correction of Reflectance Anisotropy Effects of Vegetation on Airborne Spectroscopy Data and Derived Products , 2014, IEEE Transactions on Geoscience and Remote Sensing.

[220]  Mario Chica-Olmo,et al.  An assessment of the effectiveness of a random forest classifier for land-cover classification , 2012 .

[221]  P. Wongkaew Sugarcane White Leaf Disease Characterization , Diagnosis Development , and Control Strategies , 2012 .

[222]  Li Li,et al.  Preliminary Study of Discrimination of Sugarcane in Guangxi with HJ-1-A, B Data , 2012 .

[223]  Pascal Degenne,et al.  Improving harvest and planting monitoring for smallholders with geospatial technology: the Reunion Island experience , 2012 .

[224]  Anil Kumar,et al.  Effect on specific crop mapping using WorldView-2 multispectral add-on bands: soft classification approach , 2012 .

[225]  Murillo-Sandoval,et al.  Evaluation of Landsat 7 ETM+ Data for Spectral Discrimination and Classification of Sugarcane Varieties in Colombia , 2011 .

[226]  G. Berndes,et al.  Quantifying environmental effects of Short Rotation Coppice (SRC) on biodiversity, soil and water , 2011 .

[227]  C. Bueno,et al.  Temporal analysis of the reduction in gas emission in areas of mechanically-harvested sugarcane using satellite imagery. , 2010 .

[228]  Deng Haihua,et al.  OVERVIEW OF SUGARCANE BREEDING IN MAINLAND CHINA , 2010 .

[229]  Thomas Blaschke,et al.  Object based image analysis for remote sensing , 2010 .

[230]  K. Vinod,et al.  Development of Spectral Signatures and Classification of Sugarcane using ASTER Data , 2010 .

[231]  A. Formaggio,et al.  Crop area estimate from original and simulated spatial resolution data and landscape metrics , 2008 .

[232]  P. Weerathaworn,et al.  Dual row planting - a system to increase Thai farmers' cane yield and economic returns. , 2007 .

[233]  Thomas Blaschke,et al.  New contextual approaches using image segmentation for objectbased classification , 2004 .

[234]  Armando Apan,et al.  Spectral discrimination and classification of sugarcane varieties using EO-1 hyperion hyperspectral imagery , 2004 .

[235]  Agnès Bégué,et al.  Application of remote sensing technology to monitor sugar cane cutting and planting in Guadeloupe (French West Indies) , 2004 .

[236]  Lalit Kumar,et al.  Imaging Spectrometry and Vegetation Science , 2001 .

[237]  Qiming Zhou,et al.  Estimating local sugarcane evapotranspiration using Landsat TM image and a VITT concept , 1997 .

[238]  David Escobar,et al.  Soil Salinity Effects on Crop Growth and Yield - Illustration of an Analysis and Mapping Methodology for Sugarcane , 1996 .

[239]  N. Inman-Bamber Temperature and seasonal effects on canopy development and light interception of sugarcane , 1994 .

[240]  John R. Jensen,et al.  Introductory Digital Image Processing: A Remote Sensing Perspective , 1986 .

[241]  R. Jackson,et al.  Remote detection of nutrient and water deficiencies in sugarcane under variable cloudiness , 1981 .

[242]  J. Stevenson,et al.  An annotated list of the fungi and bacteria associated with Sugarcane and its products. , 1938 .