Ahmad Irfan S, Reid John F, Paulsen Marvin R, Sinclair James B
Research Associate.
Professor.
Plant Dis. 1999 Apr;83(4):320-327. doi: 10.1094/PDIS.1999.83.4.320.
Symptoms associated with fungal damage, viral diseases, and immature soybean (Glycine max) seeds were characterized using image processing techniques. A Red, Green, Blue (RGB) color feature-based multivariate decision model discriminated between asymptomatic and symptomatic seeds for inspection and grading. The color analysis showed distinct color differences between the asymptomatic and symptomatic seeds. A model comprising six color features including averages, minimums, and variances for RGB pixel values was developed for describing the seed symptoms. The color analysis showed that color alone did not adequately describe some of the differences among symptoms. Overall classification accuracy of 88% was achieved using a linear discriminant function with unequal priors for asymptomatic and symptomatic seeds with highest probability of occurrence. Individual classification accuracies were asymptomatic 97%, Alternaria spp. 30%, Cercospora spp. 83%, Fusarium spp. 62%, green immature seeds 91%, Phomopsis spp. 45%, soybean mosaic potyvirus (black) 81%, and soybean mosaic potyvirus (brown) 87%. The classifier performance was independent of the year the seed was sampled. The study was successful in developing a color classifier and a knowledge domain based on color for future development of intelligent automated grain grading systems.
利用图像处理技术对与真菌损伤、病毒病以及未成熟大豆种子相关的症状进行了表征。基于红、绿、蓝(RGB)颜色特征的多变量决策模型区分无症状和有症状种子,用于检测和分级。颜色分析显示无症状和有症状种子之间存在明显的颜色差异。开发了一个包含六个颜色特征(包括RGB像素值的平均值、最小值和方差)的模型来描述种子症状。颜色分析表明,仅颜色不足以充分描述症状之间的某些差异。对于出现概率最高的无症状和有症状种子,使用具有不等先验概率的线性判别函数,总体分类准确率达到了88%。个体分类准确率分别为:无症状97%、链格孢属30%、尾孢属83%、镰刀菌属62%、绿色未成熟种子91%、拟茎点霉属45%、大豆花叶马铃薯Y病毒(黑色)81%以及大豆花叶马铃薯Y病毒(棕色)87%。分类器性能与种子采样年份无关。该研究成功开发了一种颜色分类器以及基于颜色的知识领域,用于未来智能自动化谷物分级系统的开发。