Measuring leaf necrosis and chlorosis of bamboo induced by typhoon 0613 with RGB image analysis

Fei Wang , Haruhiko Yamamoto , Yasuomi Ibaraki

Journal of Forestry Research ›› 2008, Vol. 19 ›› Issue (3) : 225 -230.

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Journal of Forestry Research ›› 2008, Vol. 19 ›› Issue (3) : 225 -230. DOI: 10.1007/s11676-008-0038-z
Research Paper

Measuring leaf necrosis and chlorosis of bamboo induced by typhoon 0613 with RGB image analysis

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Abstract

Symptoms of leaf necrosis or chlorosis of bamboo induced by Typhoon 0613 (T0613) were analyzed using RGB image analysis in Yamaguchi city, Japan. Results showed a closely positive relationship between Green/Red (G/R) value for indoor taking images of bamboo individual leaves and chlorophyll meter value (SPAD) with regression coefficient of 0.961. The relation between G/R value of room taking images and Necrotic Area Percentage (NAP) for bamboo individual leaves showed an inverse logistic function relationship, with the correlated coefficient equaling to 0.958. Both leaf chlorosis and necrosis can be quantitatively estimated by RGB image analysis. Moreover, the variance of Green/Luminance (G/L) value for the same leaf was less than that of G/R for images taken in the conditions with large light difference, especially for green leaves. G/L value also exhibited a closer relationship with SPAD value of leaves with chlorosis than that of G/R values at the same condition. The relationship between G/L value for bamboo canopies and the Distance from Coastline (DC) was also closer than that of the G/R value for the images taken at field sites with big light difference.

Keywords

bamboo / G/R value / G/L value / leaf necrosis and chlorosis / less rainfall / T0613

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Fei Wang, Haruhiko Yamamoto, Yasuomi Ibaraki. Measuring leaf necrosis and chlorosis of bamboo induced by typhoon 0613 with RGB image analysis. Journal of Forestry Research, 2008, 19(3): 225-230 DOI:10.1007/s11676-008-0038-z

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