Detection of the tulip breaking virus (TBV) in tulips using optical sensors

被引:0
作者
G. Polder
G. W. A. M. van der Heijden
J. van Doorn
J. G. P. W. Clevers
R. van der Schoor
A. H. M. C. Baltissen
机构
[1] Wageningen University,Biometris
[2] Wageningen University,Applied Plant Research
[3] Wageningen University,Centre for Geo
[4] Wageningen University,Information
来源
Precision Agriculture | 2010年 / 11卷
关键词
Plant virus; Image processing; Hyperspectral imaging; Spectroscopy; Machine vision;
D O I
暂无
中图分类号
学科分类号
摘要
The tulip breaking virus (TBV) causes severe economic losses for countries that export tulips such as the Netherlands. Infected plants have to be removed from the field as soon as possible. There is an urgent need for a rapid and objective method of screening. In this study, four proximal optical sensing techniques for the detection of TBV in tulip plants were evaluated and compared with a visual assessment by crop experts as well as with an ELISA (enzyme immunoassay) analysis of the same plants. The optical sensor techniques used were an RGB color camera, a spectrophotometer measuring from 350 to 2500 nm, a spectral imaging camera covering a spectral range from 400 to 900 nm and a chlorophyll fluorescence imaging system that measures the photosynthetic activity. Linear discriminant classification was used to compare the results of these optical techniques and the visual assessment with the ELISA score. The spectral imaging system was the best optical technique and its error was only slightly larger than the visual assessment error. The experimental results appear to be promising, and they have led to further research to develop an autonomous robot for the detection and removal of diseased tulip plants in the open field. The application of this robot system will reduce the amount of insecticides and the considerable pressure on labor for selecting diseased plants by the crop expert.
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页码:397 / 412
页数:15
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