Leaf Doctor: A New Portable Application for Quantifying Plant Disease Severity.

An interactive, iterative smartphone application was used on color images to distinguish diseased from healthy plant tissues and calculate percentage of disease severity. The user touches the application's display screen to select up to eight different colors that represent healthy tissues. The user then moves a threshold slider until only the symptomatic tissues have been transformed into a blue hue. The pixelated image is then analyzed to calculate the disease percentage. This study reports the accuracy, precision, and robustness of Leaf Doctor using six different diseases with typical lesions of varying severity. Estimates of disease severity from Leaf Doctor were highly accurate (R2 ≥ 0.79; Cb ≥ 0.959) compared with estimates obtained from the discipline-standard, Assess. Precision was operationally defined as the ability of a rater to use Leaf Doctor and repeatedly obtain similar percentages of disease severity for the same image. Coefficients of variation were low (0.51 to 14.1%) across all disease datasets but a significant negative relationship was found between the coefficient of variation of estimates and mean disease severity. Other advantages of Leaf Doctor included comparatively less time for image processing, low cost, ease of use, ability to send results by e-mail, and the ability to create realistic standard area diagrams. Leaf Doctor is compatible with iPhone, iPad, and iPod touch and is optimized for iPhone 5. It is available as a free download at the iTunes Store.

[1]  Laurence V. Madden,et al.  The study of plant disease epidemics , 2007 .

[2]  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.

[3]  R. T. Sherwood Illusions in Visual Assessment of Stagonospora Leaf Spot of Orchardgrass , 1983 .

[4]  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.

[5]  C. Osborne,et al.  A comparison of visual and digital image-processing methods in quantifying the severity of coffee leaf rust (Hemileia vastatrix) , 1993 .

[6]  H. K. Ngugi,et al.  Reliability and accuracy of visual methods to quantify severity of foliar bacterial spot symptoms on peach and nectarine. , 2013 .

[7]  Jg Horsfall,et al.  An improved grading system for measuring plant diseases , 1945 .

[8]  Kaur Prabhjot,et al.  DOFCM: A Robust Clustering Technique Based upon Density , 2011 .

[9]  L. Lin,et al.  A concordance correlation coefficient to evaluate reproducibility. , 1989, Biometrics.

[10]  Forrest W. Nutter,et al.  Assessing the accuracy, intra-rater repeatability, and inter-rater reliability of disease assessment systems , 1993 .

[11]  Sukumar Chakraborty,et al.  Quantitative assessment of lesion characteristics and disease severity using digital image processing , 1997 .

[12]  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.

[13]  F. W. Nutter,et al.  Improving the accuracy and precision of disease assessments : selection of methods and use of computer-aided training programs , 1995 .

[14]  Jayme Garcia Arnal Barbedo,et al.  An Automatic Method to Detect and Measure Leaf Disease Symptoms Using Digital Image Processing. , 2014, Plant disease.

[15]  R. E. Gaunt,et al.  New technologies in disease measurement and yield loss appraisal , 1995 .

[16]  T. Hsiang,et al.  Quantifying Fungal Infection of Plant Leaves by Digital Image Analysis Using Scion Image Software , 2022 .

[17]  H. Nilsson Remote sensing and image analysis in plant pathology. , 1995, Annual review of phytopathology.

[18]  S. Chun,et al.  Digital image analysis to measure lesion area of cucumber anthracnose by Colletotrichum orbiculare , 2005, Journal of General Plant Pathology.

[19]  C. James A Manual of Assessment Keys for Plant Diseases , 1980 .

[20]  J. Kranz,et al.  Measuring Plant Disease , 1988 .

[21]  S. Lindow Quantification of Foliar Plant Disease Symptoms by Microcomputer-Digitized Video Image Analysis , 1983 .