4.3 Article

A new approach to detect mildew disease on cucumber (Pseudoperonospora cubensis) leaves with image processing

Journal

JOURNAL OF PLANT PATHOLOGY
Volume 104, Issue 4, Pages 1397-1406

Publisher

SPRINGER
DOI: 10.1007/s42161-022-01178-z

Keywords

Image processing; Cucumber; Mildew disease; Pseudoperonospora cubensis

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This study used image processing algorithms to diagnose mildew disease in cucumber plants, and compared the results with expert assessments. The image processing method showed a significant positive relationship with expert assessments, indicating that it can replace expert assessments.
Image processing algorithms were employed in present study to determine the level of damage caused by mildew disease on cucumber plants. Fifty of infected plant images were randomly selected and processed with the image processing algorithm developed using image processing toolbox module of MATLAB. Then the results obtained from the image processing algorithm were compared with the assessments of experts. The image processing method predicted the disease levels with 1.90 RMSE and Theil's UII of 0.0312. Kolmogorov-Smirnov test was used to test the normality assumption of the data and test results revealed a normal distribution (p>0.05). Determination coefficient (R-2 = 0.995, p < 0.01) and Pearson's correlation coefficient (r = 0.997, p < 0.01) indicated significant positive relationship between image processing and expert assessments. The study results indicated that present image processing algorithm could successfully be used in place of expert assessment for diagnosis of mildew disease in cucumber plants.

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