From visual estimates to fully automated sensor-based measurements of plant disease severity: status and challenges for improving accuracy
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Emerson M. Del Ponte | David Bohnenkamp | Clive H. Bock | Anne-Katrin Mahlein | Jayme G. A. Barbedo | J. Barbedo | Anne-Katrin Mahlein | D. Bohnenkamp | C. Bock | E. M. Ponte | David Bohnenkamp
[1] T R Gottwald,et al. Characteristics of the Perception of Different Severity Measures of Citrus Canker and the Relationships Between the Various Symptom Types. , 2008, Plant disease.
[2] B. Tychon,et al. A comparison between visual estimates and image analysis measurements to determine septoria leaf blotch severity in winter wheat. , 2015 .
[3] Jose A. Ventura,et al. A smartphone application to detection and classification of coffee leaf miner and coffee leaf rust , 2019, ArXiv.
[4] Jose A. Jiménez-Berni,et al. Phenomic Approaches and Tools for Phytopathologists. , 2017, Phytopathology.
[5] D. Martin,et al. Microcomputer-Based Quantification of Maize Streak Virus Symptoms in Zea mays. , 1998, Phytopathology.
[6] C. Bock,et al. Development and validation of standard area diagrams to aid assessment of pecan scab symptoms on fruit , 2013 .
[7] Ethan L. Stewart,et al. Measuring quantitative virulence in the wheat pathogen Zymoseptoria tritici using high-throughput automated image analysis. , 2014, Phytopathology.
[8] A. Gitelson,et al. Assessing Carotenoid Content in Plant Leaves with Reflectance Spectroscopy¶ , 2002, Photochemistry and photobiology.
[9] H. K. Ngugi,et al. Reliability and accuracy of visual methods to quantify severity of foliar bacterial spot symptoms on peach and nectarine. , 2013 .
[10] A Hetzroni,et al. Machine vision monitoring of plant health. , 1994, Advances in space research : the official journal of the Committee on Space Research.
[11] Hod Lipson,et al. Image set for deep learning: field images of maize annotated with disease symptoms , 2018, BMC Research Notes.
[12] Lutz Plümer,et al. Calibration of hyperspectral close-range pushbroom cameras for plant phenotyping , 2015 .
[13] Pol Coppin,et al. Detection of biotic stress (Venturia inaequalis) in apple trees using hyperspectral data: Non-parametric statistical approaches and physiological implications , 2007 .
[14] Laurence V. Madden,et al. Introduction to Plant Disease Epidemiology , 1990 .
[15] Jan Behmann,et al. In-Field Detection of Yellow Rust in Wheat on the Ground Canopy and UAV Scale , 2019, Remote. Sens..
[16] L. Plümer,et al. Original paper: Early detection and classification of plant diseases with Support Vector Machines based on hyperspectral reflectance , 2010 .
[17] J. Kranz,et al. Measuring Plant Disease , 1988 .
[18] Norman C. Elliott,et al. Using digital image analysis and spectral reflectance data to quantify damage by greenbug (Hemitera: Aphididae) in winter wheat , 2006 .
[19] C. Bock,et al. Effects of rater bias and assessment method on disease severity estimation with regard to hypothesis testing , 2016 .
[20] M. Hoddle,et al. Measuring Mite Feeding Damage on Avocado Leaves with Automated Image Analysis Software , 1999 .
[21] E. M. Ponte,et al. Accuracy and Reliability of Severity Estimates Using Linear or Logarithmic Disease Diagram Sets in True Colour or Black and White: a Study Case for Rice Brown Spot , 2014 .
[22] Uwe Rascher,et al. Observation of plant-pathogen interaction by simultaneous hyperspectral imaging reflection and transmission measurements. , 2016, Functional plant biology : FPB.
[23] Ben Somers,et al. Hyperspectral Reflectance and Fluorescence Imaging to Detect Scab Induced Stress in Apple Leaves , 2009, Remote. Sens..
[24] D. M. Klaus,et al. The assessment of leaf water content using leaf reflectance ratios in the visible, near‐, and short‐wave‐infrared , 2008 .
[25] Douglas A. Landis,et al. An Inexpensive, Accurate Method for Measuring Leaf Area and Defoliation Through Digital Image Analysis , 2002, Journal of economic entomology.
[26] Alsayed Algergawy,et al. A Deep Learning-based Approach for Banana Leaf Diseases Classification , 2017, BTW.
[27] T R Gottwald,et al. Automated Image Analysis of the Severity of Foliar Citrus Canker Symptoms. , 2009, Plant disease.
[28] Zhu-Hong You,et al. Plant disease leaf image segmentation based on superpixel clustering and EM algorithm , 2017, Neural Computing and Applications.
[29] D. J. Royle,et al. The reliability of visual estimates of disease severity on cereal leaves , 1995 .
[30] Frédéric Baret,et al. Assessment of Unmanned Aerial Vehicles Imagery for Quantitative Monitoring of Wheat Crop in Small Plots , 2008, Sensors.
[31] Anne-Katrin Mahlein,et al. Assessment of Fusarium Infection and Mycotoxin Contamination of Wheat Kernels and Flour Using Hyperspectral Imaging , 2019, Toxins.
[32] Marston Héracles Domingues Franceschini,et al. Feasibility of Unmanned Aerial Vehicle Optical Imagery for Early Detection and Severity Assessment of Late Blight in Potato , 2019, Remote. Sens..
[33] Stefan Thomas,et al. Quantitative assessment of disease severity and rating of barley cultivars based on hyperspectral imaging in a non-invasive, automated phenotyping platform , 2018, Plant Methods.
[34] Baskar Ganapathysubramanian,et al. An explainable deep machine vision framework for plant stress phenotyping , 2018, Proceedings of the National Academy of Sciences.
[35] Douglas G. Altman,et al. Practical statistics for medical research , 1990 .
[36] Kristian Kersting,et al. Hyperspectral imaging reveals the effect of sugar beet quantitative trait loci on Cercospora leaf spot resistance. , 2016, Functional plant biology : FPB.
[37] Peter McCloskey,et al. A Mobile-Based Deep Learning Model for Cassava Disease Diagnosis , 2019, Front. Plant Sci..
[38] D. Berner,et al. Use of digital images to differentiate reactions of collections of yellow starthistle (Centaurea solstitialis) to infection by Puccinia jaceae , 2003 .
[39] J. Sekulska-Nalewajko,et al. Automated image analysis for quantification of histochemical detection of reactive oxygen species and necrotic infection symptoms in plant leaves , 2014 .
[40] Dona Benadof. [Fusarium species]. , 2010, Revista chilena de infectologia : organo oficial de la Sociedad Chilena de Infectologia.
[41] A. Howell,et al. DISTRAIN: a computer program for training people to estimate disease severity on cereal leaves. , 1988 .
[42] Jayme Garcia Arnal Barbedo,et al. A new automatic method for disease symptom segmentation in digital photographs of plant leaves , 2017, European Journal of Plant Pathology.
[43] B. J. Christ. Effect of disease assessment method on ranking potato cultivars for resistance to early blight , 1991 .
[44] Andrew M Mutka,et al. Image-based phenotyping of plant disease symptoms , 2015, Front. Plant Sci..
[45] T R Gottwald,et al. Comparison of Assessment of Citrus Canker Foliar Symptoms by Experienced and Inexperienced Raters. , 2009, Plant disease.
[46] D. Moshou,et al. The potential of optical canopy measurement for targeted control of field crop diseases. , 2003, Annual review of phytopathology.
[47] C. McCulloch,et al. Taro Germplasm Evaluated for Resistance to Taro Leaf Blight , 2012 .
[48] Standard Area Diagrams for Aiding Severity Estimation: Scientometrics, Pathosystems, and Methodological Trends in the Last 25 Years. , 2017, Phytopathology.
[49] E.E. Pissaloux,et al. Image Processing , 1994, Proceedings. Second Euromicro Workshop on Parallel and Distributed Processing.
[50] Tom Hsiang,et al. Quantification of fungal infection of leaves with digital images and Scion Image software. , 2010, Methods in molecular biology.
[51] E. Kokko,et al. Quantification of common root rot symptoms in resistant and susceptible barley by image analysis , 2000 .
[52] Patrick J. Cullen,et al. UAV-hyperspectral imaging of spectrally complex environments , 2020 .
[53] Fernando Ramos-Quintana,et al. Integrating SOMs and a Bayesian Classifier for Segmenting Diseased Plants in Uncontrolled Environments , 2014, TheScientificWorldJournal.
[54] S. Chun,et al. Digital image analysis to measure lesion area of cucumber anthracnose by Colletotrichum orbiculare , 2005, Journal of General Plant Pathology.
[55] Ulrich Schurr,et al. Future scenarios for plant phenotyping. , 2013, Annual review of plant biology.
[56] W. Liu,et al. Detecting Wheat Powdery Mildew and Predicting Grain Yield Using Unmanned Aerial Photography. , 2018, Plant disease.
[57] Achim Walter,et al. Ranking quantitative resistance to Septoria tritici blotch in elite wheat cultivars using automated image analysis , 2017, bioRxiv.
[58] Kaur Prabhjot,et al. DOFCM: A Robust Clustering Technique Based upon Density , 2011 .
[59] A. Gitelson,et al. Non‐destructive optical detection of pigment changes during leaf senescence and fruit ripening , 1999 .
[60] J. Kerns,et al. Brachypodium: A Potential Model Host for Fungal Pathogens of Turfgrasses. , 2017, Phytopathology.
[61] Gonzalo Pajares,et al. Digital Image Sensor-Based Assessment of the Status of Oat (Avena sativa L.) Crops after Frost Damage , 2011, Sensors.
[62] Anne-Katrin Mahlein,et al. Hyperspectral Sensors and Imaging Technologies in Phytopathology: State of the Art. , 2018, Annual review of phytopathology.
[63] P. Curran. Remote sensing of foliar chemistry , 1989 .
[64] Tim R. Gottwald,et al. Citrus Huanglongbing: the pathogen and its impact. , 2007 .
[65] E. M. Bakr,et al. A new software for measuring leaf area, and area damaged by Tetranychus urticae Koch , 2005 .
[66] Anne-Katrin Mahlein,et al. Fusion of sensor data for the detection and differentiation of plant diseases in cucumber , 2014 .
[67] Sanjay B. Patil,et al. LEAF DISEASE SEVERITY MEASUREMENT USING IMAGE PROCESSING , 2011 .
[68] L. Plümer,et al. Development of spectral indices for detecting and identifying plant diseases , 2013 .
[69] John C. Baird,et al. Fundamentals of scaling and psychophysics , 1978 .
[70] U. Singh,et al. Plant Disease Management: Principles and Practices , 2017 .
[71] Christian Bauckhage,et al. Metro Maps of Plant Disease Dynamics—Automated Mining of Differences Using Hyperspectral Images , 2015, PloS one.
[72] José G. M. Esgario,et al. Deep Learning for Classification and Severity Estimation of Coffee Leaf Biotic Stress , 2019, Comput. Electron. Agric..
[73] C. Field,et al. A narrow-waveband spectral index that tracks diurnal changes in photosynthetic efficiency , 1992 .
[74] Eric Duchêne,et al. A semi-automatic non-destructive method to quantify grapevine downy mildew sporulation. , 2011, Journal of microbiological methods.
[75] Alain Clément,et al. A new colour vision system to quantify automatically foliar discolouration caused by insect pests feeding on leaf cells , 2015 .
[76] C. Bock,et al. Development and Validation of Standard Area Diagrams as Assessment Aids for Estimating the Severity of Citrus Canker on Unripe Oranges. , 2014, Plant disease.
[77] C. Pedroso,et al. Development and validation of a diagrammatic scale for estimation of anthracnose on sweet pepper fruits for epidemiological studies. , 2011 .
[78] E. Oerke. Crop losses to pests , 2005, The Journal of Agricultural Science.
[79] Koushik Nagasubramanian,et al. Plant disease identification using explainable 3D deep learning on hyperspectral images , 2019, Plant Methods.
[80] Jayme Garcia Arnal Barbedo,et al. An Automatic Method to Detect and Measure Leaf Disease Symptoms Using Digital Image Processing. , 2014, Plant disease.
[81] A. Walter,et al. Plant phenotyping: from bean weighing to image analysis , 2015, Plant Methods.
[82] Haiguang Wang,et al. Identification and Severity Determination of Wheat Stripe Rust and Wheat Leaf Rust Based on Hyperspectral Data Acquired Using a Black-Paper-Based Measuring Method , 2016, PloS one.
[83] Zhanhong Ma,et al. Application of Near-Infrared Spectroscopy to Quantitatively Determine Relative Content of Puccnia striiformis f. sp. tritici DNA in Wheat Leaves in Incubation Period , 2017 .
[84] Anne-Katrin Mahlein,et al. Hyperspectral imaging for small-scale analysis of symptoms caused by different sugar beet diseases , 2012, Plant Methods.
[85] Janick Mathys,et al. The use of digital image analysis and real-time PCR fine-tunes bioassays for quantification of Cercospora leaf spot disease in sugar beet breeding , 2012 .
[86] Jayme Garcia Arnal Barbedo,et al. Plant disease identification from individual lesions and spots using deep learning , 2019, Biosystems Engineering.
[87] T. R. Gottwald,et al. The Horsfall-Barratt scale and severity estimates of citrus canker , 2009, European Journal of Plant Pathology.
[88] Lutz Plümer,et al. A review of advanced machine learning methods for the detection of biotic stress in precision crop protection , 2014, Precision Agriculture.
[89] A. C. Newton,et al. Subjective components of mildew assessment on spring barley , 1994, European Journal of Plant Pathology.
[90] F. Rodrigues,et al. Development and validation of a set of standard area diagrams to aid in estimation of spot blotch severity on wheat leaves , 2014 .
[91] T. Hsiang,et al. Quantifying Fungal Infection of Plant Leaves by Digital Image Analysis Using Scion Image Software , 2022 .
[92] S. Lindow. Quantification of Foliar Plant Disease Symptoms by Microcomputer-Digitized Video Image Analysis , 1983 .
[93] Jayme Garcia Arnal Barbedo,et al. Digital image processing techniques for detecting, quantifying and classifying plant diseases , 2013, SpringerPlus.
[94] W. C. James,et al. ASSESSMENT OF PLANT DISEASES AND LOSSES , 1974 .
[95] Hong Zhang,et al. Rice Blast Disease Recognition Using a Deep Convolutional Neural Network , 2019, Scientific Reports.
[96] P. Paul,et al. Development and validation of a set of standard area diagrams to estimate severity of potato early blight , 2013, European Journal of Plant Pathology.
[97] Neil McRoberts,et al. Crop health and its global impacts on the components of food security , 2017, Food Security.
[98] Kuo-Yi Huang. Application of artificial neural network for detecting Phalaenopsis seedling diseases using color and texture features , 2007 .
[99] A comparison of disease severity measurements using image analysis and visual estimates using a category scale for genetic analysis of resistance to bacterial spot in tomato , 2014, European Journal of Plant Pathology.
[100] Wenjiang Huang,et al. New Spectral Index for Detecting Wheat Yellow Rust Using Sentinel-2 Multispectral Imagery , 2018, Sensors.
[101] J. Behmann,et al. Hyperspectral quantification of wheat resistance to Fusarium head blight: comparison of two Fusarium species , 2018, European Journal of Plant Pathology.
[102] T. Gottwald,et al. What interval characteristics make a good categorical disease assessment scale? , 2014, Phytopathology.
[103] U. Steiner,et al. Potential of Digital Thermography for Disease Control , 2010 .
[104] Anne-Katrin Mahlein,et al. Aiming at decision making in plant disease protection and phenotyping by the use of optical sensors , 2018, European Journal of Plant Pathology.
[105] Anatoly A. Gitelson,et al. Relationship between fraction of radiation absorbed by photosynthesizing maize and soybean canopies and NDVI from remotely sensed data taken at close range and from MODIS 250 m resolution data , 2014 .
[106] K. P. Pauls,et al. Application of image analysis in studies of quantitative disease resistance, exemplified using common bacterial blight-common bean pathosystem. , 2012, Phytopathology.
[107] D. Lamb,et al. Evaluating ten spectral vegetation indices for identifying rust infection in individual wheat leaves , 2008, Precision Agriculture.
[108] René Hans-Jürgen Heim,et al. Developing a spectral disease index for myrtle rust (Austropuccinia psidii) , 2019, Plant Pathology.
[109] G. Mahon. A Proposal for Strength-of-Agreement Criteria for Lin’s Concordance Correlation Coefficient , 2005 .
[110] Fantao Kong,et al. Automatic image segmentation method for cotton leaves with disease under natural environment , 2018, Journal of Integrative Agriculture.
[111] Forrest W. Nutter,et al. The Role of Psychophysics in Phytopathology: The Weber–Fechner Law Revisited , 2006, European Journal of Plant Pathology.
[112] Wencai Yang,et al. Development and validation of a standard area diagram set to aid estimation of bacterial spot severity on tomato leaves , 2015, European Journal of Plant Pathology.
[113] A. Ganthaler,et al. Using image analysis for quantitative assessment of needle bladder rust disease of Norway spruce , 2018, Plant pathology.
[114] J. A. Schell,et al. Monitoring vegetation systems in the great plains with ERTS , 1973 .
[115] C. Tucker,et al. Expansion and Contraction of the Sahara Desert from 1980 to 1990 , 1991, Science.
[116] J. Freeman,et al. Advanced Copper Composites Against Copper-Tolerant Xanthomonas perforans and Tomato Bacterial Spot. , 2018, Phytopathology.
[117] W. C. Moore. The measurement of plant diseases in the field , 1943 .
[118] Marcel Salathé,et al. An open access repository of images on plant health to enable the development of mobile disease diagnostics through machine learning and crowdsourcing , 2015, ArXiv.
[119] Alexander Wendel,et al. Illumination compensation in ground based hyperspectral imaging , 2017 .
[120] Chu Zhang,et al. Hyperspectral Imaging for Presymptomatic Detection of Tobacco Disease with Successive Projections Algorithm and Machine-learning Classifiers , 2017, Scientific Reports.
[121] G. Carter,et al. Leaf optical properties in higher plants: linking spectral characteristics to stress and chlorophyll concentration. , 2001, American journal of botany.
[122] Baskar Ganapathysubramanian,et al. A real-time phenotyping framework using machine learning for plant stress severity rating in soybean , 2017, Plant Methods.
[123] Vlastimil Křivan,et al. Computer-assisted estimation of leaf damage caused by spider mites , 2006 .
[124] Kristian Kersting,et al. Extending Hyperspectral Imaging for Plant Phenotyping to the UV-Range , 2019, Remote. Sens..
[125] H. Muhammed,et al. Measuring crop status using multivariate analysis of hyperspectral field reflectance with application to disease severity and plant density , 2007, Precision Agriculture.
[126] Jayme Garcia Arnal Barbedo,et al. Annotated Plant Pathology Databases for Image-Based Detection and Recognition of Diseases , 2018, IEEE Latin America Transactions.
[127] Baskar Ganapathysubramanian,et al. Hyperspectral band selection using genetic algorithm and support vector machines for early identification of charcoal rot disease in soybean stems , 2018, Plant Methods.
[128] E. González-Domínguez,et al. Development and validation of a standard area diagram set to aid assessment of severity of loquat scab on fruit , 2014, European Journal of Plant Pathology.
[129] Z. Niu,et al. Identification of yellow rust in wheat using in-situ spectral reflectance measurements and airborne hyperspectral imaging , 2007, Precision Agriculture.
[130] Di Cui,et al. Image processing methods for quantitatively detecting soybean rust from multispectral images , 2010 .
[131] S. Lindow,et al. Estimating Disease Severity of Single Plants , 1983 .
[132] Roque Alfredo Osornio-Rios,et al. Smart Sensor for Real-Time Quantification of Common Symptoms Present in Unhealthy Plants , 2012, Sensors.
[133] Stephen Marshall,et al. Near-infrared hyperspectral imaging for non-destructive classification of commercial tea products , 2018, Journal of Food Engineering.
[134] W. C. James,et al. illustrated series of assessment keys for plant diseases, their preparation and usage , 1971 .
[135] Anne-Katrin Mahlein,et al. Recent advances in sensing plant diseases for precision crop protection , 2012, European Journal of Plant Pathology.
[136] T R Gottwald,et al. Visual Rating and the Use of Image Analysis for Assessing Different Symptoms of Citrus Canker on Grapefruit Leaves. , 2008, Plant disease.
[137] J. Silvertown. A new dawn for citizen science. , 2009, Trends in ecology & evolution.
[138] James G. Horsfall,et al. Chapter 6 – Pathometry: The Measurement of Plant Disease , 1978 .
[139] S. K. Hahn,et al. Correlated resistance of cassava to mosaic and bacterial blight diseases , 1980, Euphytica.
[140] G. Boland,et al. Epidemiology of sclerotinia rot of carrot caused by Sclerotinia sclerotiorum , 2005 .
[141] L. Madden,et al. Nonparametric analysis of ordinal data in designed factorial experiments. , 2004, Phytopathology.
[142] Erich-Christian Oerke,et al. Hyperspectral phenotyping of the reaction of grapevine genotypes to Plasmopara viticola. , 2016, Journal of experimental botany.
[143] S. Delalieux,et al. Hyperspectral indices to diagnose leaf biotic stress of apple plants, considering leaf phenology , 2009 .
[144] R. Likert. “Technique for the Measurement of Attitudes, A” , 2022, The SAGE Encyclopedia of Research Design.
[145] Anne-Katrin Mahlein,et al. Remote sensing to detect plant stress induced by Heterodera schachtii and Rhizoctonia solani in suga , 2011 .
[146] T. Turkington,et al. Fungicide and Cultivar Management of Leaf Spot Diseases of Winter Wheat in Western Canada. , 2018, Plant Disease.
[147] M. J. Jeger,et al. Factors affecting the estimation of disease intensity in simulated plant structures , 1987 .
[148] K. Haynes,et al. Characterization of Early Blight Resistance in Potato Cultivars. , 2019, Plant disease.
[149] M. Gleason,et al. Improving sooty blotch and flyspeck severity estimation on apple fruit with the aid of standard area diagrams , 2010, European Journal of Plant Pathology.
[150] W. Fry,et al. Foliar resistance to late blight in potato clones evaluated in national trials in 1997 , 2002, American Journal of Potato Research.
[151] Jie Tian,et al. Wheat leaf lesion color image segmentation with improved multichannel selection based on the Chan-Vese model , 2017, Comput. Electron. Agric..
[152] A. Ferrer,et al. Pixel classification methods for identifying and quantifying leaf surface injury from digital images , 2014 .
[153] Kristian Kersting,et al. Hyperspectral phenotyping on the microscopic scale: towards automated characterization of plant-pathogen interactions , 2015, Plant Methods.
[154] P. R. Scott,et al. Plant disease: a threat to global food security. , 2005, Annual review of phytopathology.
[155] J. G. Horskfall. An Improved Grading System For Measuring Plant Diseases Vol-36 , 1945 .
[156] C. Bock,et al. A discussion on disease severity index values. Part I: warning on inherent errors and suggestions to maximise accuracy , 2017 .
[157] C. Osborne,et al. A comparison of visual and digital image-processing methods in quantifying the severity of coffee leaf rust (Hemileia vastatrix) , 1993 .
[158] Satish Kumar Singh,et al. Color sensing and image processing-based automatic soybean plant foliar disease severity detection and estimation , 2015, Multimedia Tools and Applications.
[159] F. Nutter,et al. Quantification of within-field spread of soybean mosaic virus in soybean using strain-specific monoclonal antibodies. , 1998, Phytopathology.
[160] S. Michereff,et al. Diagrammatic scale to assess downy mildew severity in melon , 2009 .
[161] M. Carmona,et al. Comparison of methods to assess severity of common rust caused by Puccinia sorghi in maize , 2011 .
[162] Jayme Garcia Arnal Barbedo,et al. A review on the main challenges in automatic plant disease identification based on visible range images , 2016 .
[163] Hans-Peter Mock,et al. Non-invasive Presymptomatic Detection of Cercospora beticola Infection and Identification of Early Metabolic Responses in Sugar Beet , 2016, Front. Plant Sci..
[164] Jürgen Kranz,et al. Experimental Techniques in Plant Disease Epidemiology , 1988, Springer Berlin Heidelberg.
[165] L. Madden,et al. Reliability and accuracy of visual estimation of phomopsis leaf blight of strawberry. , 2003, Phytopathology.
[166] Erich-Christian Oerke,et al. Use of imaging spectroscopy to discriminate symptoms caused by Heterodera schachtii and Rhizoctonia solani on sugar beet , 2011, Precision Agriculture.
[167] U. Steiner,et al. Spectral signatures of sugar beet leaves for the detection and differentiation of diseases , 2010, Precision Agriculture.
[168] K. S. Chester. Plant disease losses: their appraisal and interpretation. , 1950 .
[169] Laurence V. Madden,et al. The study of plant disease epidemics , 2007 .
[170] L. Madden,et al. Relationships between incidence and severity of fusarium head blight on winter wheat in ohio. , 2005, Phytopathology.
[171] Christian Bauckhage,et al. Feeding the World with Big Data: Uncovering Spectral Characteristics and Dynamics of Stressed Plants , 2016, Computational Sustainability.
[172] K. Steddom,et al. Comparing Image Format and Resolution for Assessment of Foliar Diseases of Wheat , 2005 .
[173] G. A. Forbes,et al. The effect of using a Horsfall‐Barratt scale on precision and accuracy of visual estimation of potato late blight severity in the field , 1994 .
[174] Ernest Mwebaze,et al. Machine Learning for Plant Disease Incidence and Severity Measurements from Leaf Images , 2016, 2016 15th IEEE International Conference on Machine Learning and Applications (ICMLA).
[175] C. Hollier,et al. Crop losses due to diseases and their implications for global food production losses and food security , 2012, Food Security.
[176] Emil W. Ciurczak,et al. Handbook of Near-Infrared Analysis , 1992 .
[177] P. Schweizer,et al. A high-throughput screening system for barley/powdery mildew interactions based on automated analysis of light micrographs , 2008, BMC Plant Biology.
[178] Davoud Ashourloo,et al. Developing Two Spectral Disease Indices for Detection of Wheat Leaf Rust (Pucciniatriticina) , 2014, Remote. Sens..
[179] Forrest W. Nutter,et al. Assessing the accuracy, intra-rater repeatability, and inter-rater reliability of disease assessment systems , 1993 .
[180] Jaime Lloret,et al. A Wireless Sensor Network for Vineyard Monitoring That Uses Image Processing , 2011, Sensors.
[181] Kristian Kersting,et al. Quantitative and qualitative phenotyping of disease resistance of crops by hyperspectral sensors: seamless interlocking of phytopathology, sensors, and machine learning is needed! , 2019, Current opinion in plant biology.
[182] Juha Suomalainen,et al. A Lightweight Hyperspectral Mapping System and Photogrammetric Processing Chain for Unmanned Aerial Vehicles , 2014, Remote. Sens..
[183] Jaroslaw Goclawski,et al. Neural network segmentation of images from stained cucurbits leaves with colour symptoms of biotic and abiotic stresses , 2012, Int. J. Appl. Math. Comput. Sci..
[184] Yu Sun,et al. Automatic Image-Based Plant Disease Severity Estimation Using Deep Learning , 2017, Comput. Intell. Neurosci..
[185] B. Cooke,et al. Disease assessment and yield loss , 2006 .
[186] Hochschule Emden Leer. Automated image analysis , 2011 .
[187] Dispersal of conidia of Fusicladium eriobotryae and spatial patterns of scab in loquat orchards in Spain , 2014, European Journal of Plant Pathology.
[188] D. J. Royle,et al. Reliable measurement of disease severity , 1995 .
[189] Clive H. Bock,et al. Plant Disease Severity Estimated Visually, by Digital Photography and Image Analysis, and by Hyperspectral Imaging , 2010 .
[190] H. Piepho,et al. Are ordinal rating scales better than percent ratings? a statistical and “psychological” view , 2007, Euphytica.
[191] H. M. Tysdal,et al. Numbering and Note-Taking Systems for Use in the Improvement of Forage Crops 1 , 1945 .
[192] S. Welham,et al. Some consequences of using the Horsfall-Barratt scale for hypothesis testing. , 2010, Phytopathology.
[193] J. Rowland,et al. Nondestructive analysis of senescence in mesophyll cells by spectral resolution of protein synthesis-dependent pigment metabolism. , 2008, The New phytologist.
[194] Ethan L. Stewart,et al. An Improved Method for Measuring Quantitative Resistance to the Wheat Pathogen Zymoseptoria tritici Using High-Throughput Automated Image Analysis. , 2016, Phytopathology.
[195] Sukumar Chakraborty,et al. Quantitative assessment of lesion characteristics and disease severity using digital image processing , 1997 .
[196] Julio Martin Duarte-Carvajalino,et al. Evaluating Late Blight Severity in Potato Crops Using Unmanned Aerial Vehicles and Machine Learning Algorithms , 2018, Remote. Sens..
[197] R. Ehsani,et al. Detection of Laurel Wilt Disease in Avocado Using Low Altitude Aerial Imaging , 2015, PloS one.
[198] M. Hawkesford,et al. Field Scanalyzer: An automated robotic field phenotyping platform for detailed crop monitoring. , 2016, Functional plant biology : FPB.
[199] Michael D. Abràmoff,et al. Image processing with ImageJ , 2004 .
[200] Jeremy S. Smith,et al. An image-processing based algorithm to automatically identify plant disease visual symptoms. , 2009 .
[201] J. G. A. Barbedo,et al. A novel algorithm for semi-automatic segmentation of plant leaf disease symptoms using digital image processing , 2016, Tropical Plant Pathology.
[202] Ashutosh Kumar Singh,et al. Machine Learning for High-Throughput Stress Phenotyping in Plants. , 2016, Trends in plant science.
[203] Malusi Sibiya,et al. An Algorithm for Severity Estimation of Plant Leaf Diseases by the Use of Colour Threshold Image Segmentation and Fuzzy Logic Inference: A Proposed Algorithm to Update a “Leaf Doctor” Application , 2019, AgriEngineering.
[204] C. Bock. Accuracy of plant specimen disease severity estimates: concepts, history, methods, ramifications and challenges for the future. , 2016 .
[205] E. Kanda,et al. Assessment of Rice Panicle Blast Disease Using Airborne Hyperspectral Imagery , 2016 .
[206] Marcelo Giovanetti Canteri,et al. Diagrammatic scale for assessment of soybean rust severity , 2006 .
[207] G. A. Blackburn,et al. Hyperspectral remote sensing of plant pigments. , 2006, Journal of experimental botany.
[208] H. Nilsson. Remote sensing and image analysis in plant pathology. , 1995, Annual review of phytopathology.
[209] N. Coops,et al. Assessment of Dothistroma Needle Blight of Pinus radiata Using Airborne Hyperspectral Imagery. , 2003, Phytopathology.
[210] D. Guttman,et al. Image-Based Quantification of Plant Immunity and Disease. , 2016, Molecular plant-microbe interactions : MPMI.
[211] C. Bock,et al. Assessing disease severity: accuracy and reliability of rater estimates in relation to number of diagrams in a standard area diagram set , 2016 .
[212] R. T. Sherwood. Illusions in Visual Assessment of Stagonospora Leaf Spot of Orchardgrass , 1983 .
[213] A. Gitelson,et al. Optical Properties and Nondestructive Estimation of Anthocyanin Content in Plant Leaves¶ , 2001, Photochemistry and photobiology.
[214] C. Elvidge. Visible and near infrared reflectance characteristics of dry plant materials , 1990 .
[215] Yang Zhang,et al. Rice plant-hopper infestation detection and classification algorithms based on fractal dimension values and fuzzy C-means , 2013, Math. Comput. Model..
[216] S S Stevens,et al. On the Theory of Scales of Measurement. , 1946, Science.
[217] P. Hamm,et al. Aerial photography used for spatial pattern analysis of late blight infection in irrigated potato circles. , 2003, Phytopathology.
[218] Heinrich Iro,et al. Image Processing Methods , 2013 .
[219] Clive H. Bock,et al. Detection and measurement of plant disease symptoms using visible-wavelength photography and image analysis , 2011 .
[220] Anne-Katrin Mahlein,et al. Benefits of hyperspectral imaging for plant disease detection and plant protection: a technical perspective , 2018 .
[221] Jeffrey C. Berry,et al. Quantitative, Image-Based Phenotyping Methods Provide Insight into Spatial and Temporal Dimensions of Plant Disease1[OPEN] , 2016, Plant Physiology.
[222] F. W. Nutter,et al. Improving the accuracy and precision of disease assessments : selection of methods and use of computer-aided training programs , 1995 .
[223] F. Rodrigues,et al. A set of standard area diagrams to assess severity of frogeye leaf spot on soybean , 2015, European Journal of Plant Pathology.
[224] D. M. Gates,et al. Spectral Properties of Plants , 1965 .
[225] S. Pethybridge,et al. Leaf Doctor: A New Portable Application for Quantifying Plant Disease Severity. , 2015, Plant disease.
[226] M. Hirafuji,et al. Field phenotyping system for the assessment of potato late blight resistance using RGB imagery from an unmanned aerial vehicle , 2016 .
[227] Gary G. Grove,et al. Assessment of Severity of Powdery Mildew Infection of Sweet Cherry Leaves by Digital Image Analysis , 2001 .
[228] Erich-Christian Oerke,et al. Precision Crop Protection - the Challenge and Use of Heterogeneity , 2014 .
[229] L. Fu,et al. Rank regression for analyzing ordinal qualitative data for treatment comparison. , 2012, Phytopathology.
[230] Jg Horsfall,et al. An improved grading system for measuring plant diseases , 1945 .
[231] C. Bock,et al. A discussion on disease severity index values. Part II: using the disease severity index for null hypothesis testing , 2017 .
[232] Y. Lan,et al. Detection of rice sheath blight using an unmanned aerial system with high-resolution color and multispectral imaging , 2018, PloS one.
[233] Reza Ehsani,et al. Review: A review of advanced techniques for detecting plant diseases , 2010 .
[234] I. Cock,et al. Instruction to Authors , 2012 .
[235] Nathan Nunn,et al. Historical Development , 2013 .
[236] Won Suk Lee,et al. Comparison of two aerial imaging platforms for identification of Huanglongbing-infected citrus trees , 2013 .
[237] Anne-Katrin Mahlein. Plant Disease Detection by Imaging Sensors - Parallels and Specific Demands for Precision Agriculture and Plant Phenotyping. , 2016, Plant disease.
[238] R. Jackson,et al. Interpreting vegetation indices , 1991 .
[239] Armando Apan,et al. Detecting sugarcane ‘orange rust’ disease using EO-1 Hyperion hyperspectral imagery , 2004 .
[240] Cheng Wang,et al. Normalized Difference Vegetation Index Continuity of the Landsat 4-5 MSS and TM: Investigations Based on Simulation , 2019, Remote. Sens..
[241] Anne-Katrin Mahlein,et al. Improvement of Lesion Phenotyping in Cercospora beticola-Sugar Beet Interaction by Hyperspectral Imaging. , 2016, Phytopathology.
[242] Philippe Delfosse,et al. Plant Disease Severity Assessment-How Rater Bias, Assessment Method, and Experimental Design Affect Hypothesis Testing and Resource Use Efficiency. , 2016, Phytopathology.
[243] H. Ramon,et al. Early Disease Detection in Wheat Fields using Spectral Reflectance , 2003 .
[244] J. Féret,et al. A physically-based model for retrieving foliar biochemistry and leaf orientation using close-range imaging spectroscopy , 2016 .
[245] Christian Bauckhage,et al. Plant Phenotyping using Probabilistic Topic Models: Uncovering the Hyperspectral Language of Plants , 2016, Scientific Reports.