Measuring plant disease severity in R: introducing and evaluating the pliman package
Image analysis based on color thresholding is the reference method for measuring severity as percent area affected. It is deemed to produce accurate results, usually considered the “true” severity value. More than a dozen applications have been used for the task in phytopathometry studies, but none...
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Veröffentlicht in: | Tropical plant pathology 2022-02, Vol.47 (1), p.95-104 |
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Sprache: | eng |
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Zusammenfassung: | Image analysis based on color thresholding is the reference method for measuring severity as percent area affected. It is deemed to produce accurate results, usually considered the “true” severity value. More than a dozen applications have been used for the task in phytopathometry studies, but none was coded in R language. Here we introduced and evaluated pliman, a suite for the analysis of plant images. In particular, we show functions for computing percent severity based on RGB information contained in image palettes prepared by the user. Six image collections, totaling 249 images, from different diseases (wheat tan spot, soybean rust, olive leaf spot, rice brown spot, bean angular spot, and
Xyllela fastidiosa
on tobacco) exhibiting a range of symptomatic patterns and severity were used to evaluate the agreement of pliman predictions with measures by three other software: APS Assess, LeafDoctor, and ImageJ. Three users independently prepared three image palettes (each representing leaf background, symptomatic, or healthy leaf tissue) by manually inspecting and subsetting these target areas of the images. Pliman predictions by a joint palette (by joining images by the three users into one) were highly concordant (
ρ
c
> 0.98) with measures by the other software for all but
Xylella fastidiosa
on tobacco (
ρ
c
= 0.49). The error for the latter may be due to the low contrast between symptomatic and healthy tobacco tissues. Users showed to be a source of variation in the overall concordance depending on the disease. Reduction in the image resolution ( |
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ISSN: | 1983-2052 1982-5676 1983-2052 |
DOI: | 10.1007/s40858-021-00487-5 |