首页> 外文期刊>Transactions of the ASABE >Detection of huanglongbing disease in citrus using fluorescence spectroscopy.
【24h】

Detection of huanglongbing disease in citrus using fluorescence spectroscopy.

机译:荧光光谱法检测柑橘中的黄龙病。

获取原文
获取原文并翻译 | 示例
           

摘要

Huanglongbing (HLB) is an important citrus disease greatly affecting the citrus industry in Florida and other parts of the world. Early disease detection would control the spread of this disease through the application of suitable management measures. This study evaluates the application of fluorescence sensing for HLB detection of citrus leaves. A commercial handheld fluorescence sensor was used to collect yellow, red, and far-red fluorescence at ultraviolet (UV), blue, green, and red excitations from healthy, nutrient-deficient, and HLB-infected leaves of two different sweet orange cultivars, Hamlin and Valencia. Evaluation of the fluorescence sensing was performed under laboratory (controlled) and field conditions. The Nave-Bayes and the bagged decision tree classifiers were trained and tested to assess their performance in classifying the healthy and stressed (nutrient-deficient) leaves. Results revealed that the Nave-Bayes classifier yielded high classification accuracy under laboratory conditions (higher than 85%), while the bagged decision tree classifier yielded high overall classification accuracy under both laboratory and field conditions (higher than 94%). The bagged decision tree classifier performed better than the Nave-Bayes classifier, resulting in higher classification accuracy, although the computation time was at least 10 times greater than that of the Nave-Bayes classifier. In addition, feature extraction using forward feature selection indicated that fluorescence features such as yellow fluorescence (UV excitation) and simple fluorescence ratio (green excitation) contributed toward differentiating healthy leaves from nutrient-deficient and HLB-infected leaves.
机译:黄龙病(HLB)是一种重要的柑橘病,极大地影响了佛罗里达州和世界其他地区的柑橘产业。早期发现疾病可以通过采取适当的管理措施来控制这种疾病的传播。本研究评估了荧光传感技术在柑橘叶HLB检测中的应用。商用手持式荧光传感器用于收集来自两个不同甜橙品种的健康,营养缺乏和受HLB感染的健康叶片的紫外线(UV),蓝色,绿色和红色激发下的黄色,红色和远红色荧光,哈姆林和巴伦西亚。荧光传感的评估是在实验室(受控)和野外条件下进行的。对Nave-Bayes和袋装决策树分类器进行了培训和测试,以评估其在对健康叶子和受压(营养缺乏)叶子进行分类时的性能。结果显示,在实验室条件下,Nave-Bayes分类器具有较高的分类精度(高于85%),而袋装决策树分类器在实验室和现场条件下均具有较高的总体分类精度(高于94%)。袋装决策树分类器的性能优于Nave-Bayes分类器,尽管计算时间至少比Nave-Bayes分类器大10倍,但分类精度更高。此外,使用正向特征选择进行特征提取表明,诸如黄色荧光(紫外线激发)和简单荧光比率(绿色激发)之类的荧光特征有助于将健康叶片与营养缺乏和受HLB感染的叶片区分开。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号