基于智能手机的赤霉病快速诊断与应用系统

Dongyan Zhang, Daoyong Wang, Shizhou Du, Linsheng Huang, Haitao Zhao, Dong Liang, Chunyan Gu, Xue Yang
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引用次数: 5

摘要

小麦(Triticum aestivum L.)是世界三大谷物之一。FusaHum graminearum sew,特种真菌常危害麦穗,并产生呕吐毒素,难以控制和预防,严重威胁人类、动物的健康和中国的粮食安全。目前,这种疾病的快速、准确和非破坏性诊断设备或系统尚未公开。在本研究中,不同程度的感染穗在关键的生长阶段被采摘。利用超绿特征提取小麦穗病区,选取病穗的颜色(Lab、HSI、HSV、YCbCr颜色空间)、纹理(LBP和LLE降维)、形状(方形、形状复杂性和偏心度)共30个特征。然后利用竞争自适应重加权抽样(CARS)和粗糙集算法(RS)对病耳特征进行筛选,确定贡献最大的4个特征,分别建立CARS- svm和CARS-RS- svm模型。研究发现,CARS-SVM模型的识别率为85.4%,CARS-RS-SVM模型的识别率为92.7%。因此,从识别精度的两个指标出发,认为CARS-RS-SVM是最优模型。在此基础上,构建了基于Android手机的小麦结痂诊断系统。它由客户端、服务终端和数据库三部分组成。客户端采用Android Studio设计,其功能主要包括图像采集、图像存储、GPS定位、图像上传和诊断结果显示。Service-Terminal采用Myeclipse和Matlab软件混合编程完成,使用Tomcat作为服务器。主要实现了图像接收、图像预处理、特征提取与选择、分类器建模等功能。使用MySQL建立了“疾病特征数据库”和“疾病诊断知识库”两个数据库。最后,通过样本测试和验证,基于android的移动端可以实时采集镰刀菌头疫病图像并上传服务器。目标图像经“疾病特征库”处理比较后,从“疾病诊断知识库”中选择合适的诊断知识反馈给客户端。综上所述,本研究结果有助于田间快速、无损地调查感染的FHB,为其他作物病害的研究提供参考,促进人工智能、大数据等新技术在农业中的应用和发展。
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A Rapidly Diagnosis and Application System of Fusarium Head Blight Based on Smartphone
Wheat (Triticum aestivum L.) is one of the three major cereals worldwide. The FusaHum graminearum Sehw., special fugus always damages the wheat ear, and produces vomitoxin,is difficult to control and prevent, and seriously threatens the health of humans, animals and China's food security. Currently, rapidly, accurately and non-destructively diagnostic devices or systems for this disease have not been disclosed. In this study, the infected ears with different severities were picked up in key growth stages. The diseased area of wheat ear was extracted using hypergreen characteristic, and a total of 30 features of infected ears were chosen including color (Lab, HSI, HSV, YCbCr color space), texture (LBP and LLE dimension reduction), and shape (squareness, shape complexity, and eccentricity). Then using the competitive adaptive re-weighted sampling (CARS) and rough set algorithm (RS) to screen the characteristics of the diseased ear, the four characteristics with the largest contribution were determined to establish the CARS-SVM and CARS-RS-SVM models respectively. The study found that the recognition rate of CARS-SVM model is 85.4%, while CARS-RS-SVM model is 92.7%. Thus the CARS-RS-SVM was thought of as the optimal model by two indicators of identification accuracy. On the basis, a wheat scab diagnosis system based on Android mobile phone was constructed. It consists of three parts - Clients, Service-Terminal and Database. The Client was designed by Android Studio and its functions mainly include image acquisition, image storage, GPS positioning, image uploading and diagnostic results display. The Service-Terminal was completed by the mixed programming of Myeclipse and Matlab software, and Tomcat was used as the Server. It mainly implements the functions of image receiving, image preprocessing, feature extraction and selection, and classifier modeling. The MySQL was used to establish two databases: the “Disease Characteristics Database” and the “Disease Diagnosis Knowledge Base”. Finally, through samples testing and validating, the Android-based mobile terminal can real-time collect the image of Fusarium head blight and upload the server. After the target image was processed and compared by the “Disease Characteristics Database”, the appropriate diagnostic knowledge was selected from the “Disease Diagnosis Knowledge Base” and feedbacked to the client. In summary, the results of this study showed that it was helpful for the rapid and non-destructive investigation of infected FHB in the field, and it would provide a reference for the study of other crop diseases, facilitate the application and development of new technologies such as artificial intelligence and big data in agriculture.
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