农业工程学报
農業工程學報
농업공정학보
2015年
1期
204-211
,共8页
翟治芬%徐哲%周新群%王丽丽%张建华
翟治芬%徐哲%週新群%王麗麗%張建華
적치분%서철%주신군%왕려려%장건화
棉花%分类%模型%盲椿象%危害等级识别%朴素贝叶斯分类器
棉花%分類%模型%盲椿象%危害等級識彆%樸素貝葉斯分類器
면화%분류%모형%맹춘상%위해등급식별%박소패협사분류기
cotton%classification%models%blind stinkbug%hazard rating%recognition%naive bayesian classifier
针对自然条件下棉花盲椿象危害区域提取和危害等级识别难的问题,提出了棉花盲椿象危害等级自动识别方法。该方法以自然条件下采集的不同盲椿象危害等级棉叶图像为对象,利用最大类间方差阈值分割和多颜色分量组合方法进行作物与土壤分离和病斑分割,并利用分水岭分割方法对粘连棉叶进行分离并提取盲椿象危害棉叶区域,提取图像的颜色、纹理和形状特征,结合朴素贝叶斯分类器,依据划分的棉花盲椿象危害等级标准,对盲椿象危害等级进行识别。不同盲椿象危害等级识别试验结果表明:该模型平均识别正确率达90.0%,通过比较试验表明,该模型在识别精度比BP神经网络高2.5%,运行速度比支持向量机高11.7%,可较好的对棉花盲椿象危害等级进行识别,可为棉花盲椿象的防治提供技术支持。
針對自然條件下棉花盲椿象危害區域提取和危害等級識彆難的問題,提齣瞭棉花盲椿象危害等級自動識彆方法。該方法以自然條件下採集的不同盲椿象危害等級棉葉圖像為對象,利用最大類間方差閾值分割和多顏色分量組閤方法進行作物與土壤分離和病斑分割,併利用分水嶺分割方法對粘連棉葉進行分離併提取盲椿象危害棉葉區域,提取圖像的顏色、紋理和形狀特徵,結閤樸素貝葉斯分類器,依據劃分的棉花盲椿象危害等級標準,對盲椿象危害等級進行識彆。不同盲椿象危害等級識彆試驗結果錶明:該模型平均識彆正確率達90.0%,通過比較試驗錶明,該模型在識彆精度比BP神經網絡高2.5%,運行速度比支持嚮量機高11.7%,可較好的對棉花盲椿象危害等級進行識彆,可為棉花盲椿象的防治提供技術支持。
침대자연조건하면화맹춘상위해구역제취화위해등급식별난적문제,제출료면화맹춘상위해등급자동식별방법。해방법이자연조건하채집적불동맹춘상위해등급면협도상위대상,이용최대류간방차역치분할화다안색분량조합방법진행작물여토양분리화병반분할,병이용분수령분할방법대점련면협진행분리병제취맹춘상위해면협구역,제취도상적안색、문리화형상특정,결합박소패협사분류기,의거화분적면화맹춘상위해등급표준,대맹춘상위해등급진행식별。불동맹춘상위해등급식별시험결과표명:해모형평균식별정학솔체90.0%,통과비교시험표명,해모형재식별정도비BP신경망락고2.5%,운행속도비지지향량궤고11.7%,가교호적대면화맹춘상위해등급진행식별,가위면화맹춘상적방치제공기술지지。
Cotton, one of the most important economic crops in our country, always suffers a variety of pest during the whole process of planting. Blind stinkbug, which seriously affected the cotton quality and yield during BT cotton, is planted in large areas of the Yellow River and Xinjiang province in China. Traditional cotton blind stinkbug hazard ration identification method relies too much on experience, but recognition accuracy and recognition speed are low. In view of complex background of cotton blind stinkbug hazard region and the difficulty in segmentation and classification under natural conditions, an automatic classification method of Cotton blind stinkbug hazard level was proposed. On the basis of the classification standard of plant diseases and insect pests and hazard characteristics of cotton blind stinkbug, as well as the harm degree distribution of bug to cotton by artificial statistics, the cotton blind stinkbug damage grade was divided and the damage grade standard of bug to cotton was put forward. The processing steps of the cotton leaf image in different bug damage grade acquainted in natural conditions were as follows. Firstly, by using Q color component and Otsu segmentation method, the image background was divided. Secondly, in order to remove burrs after splitting, morphological opening operation and internal filling algorithm were used to deal with the segmented image, and the largest connected component was extracted, which can eliminate the influence of weeds. Thirdly, the disease regions of cotton were extract by H+a*+b*component and Otsu segmentation method based on blind stinkbug hazard cotton leaves. The adhesion cotton leaves were separated by Watershed segmentation method Forth, and extracted and selected contents including the color, texture and shape features of and cotton leaf hazard by blind stinkbug. In accordance with the principle of distinction and difference, color feature, texture feature and shape feature was the input indicators classifier. Based on the statistical results of color, texture and shape feature of bug damage image to cotton, R component, G component, B component, I1 component, S component and V component were selected as the color feature, Contrast and Correlation were selected as the texture feature, Pa value were selected as the shape feature. Finally, based on Matlab R2008 platform, combined with the bug feature variables and naive Bias classifier extraction, this method had the aim to distinguish the cotton blind stinkbug damage grade based on the cotton bug division of the harm grade standard. In this experiment, 120 cotton blind stinkbug damage leaves image with 6 levels were used for simulation, in which 60 images were the training set and the others were the validation set. Different bug harm level recognition experiment results showed that, the model has advantages in accuracy and speed with average rate of correct recognition as 90%and average operation time as 0.278 seconds, which was better than Support vector machine and BP neural network model. The proposed cotton blind stink bug hazard grade standard can provide a theoretical basis for the study of harmful cotton blind stinkbug. The proposed classification method of cotton blind stinkbug hazard rating will not only promote technical level for the prevention and treatment of the cotton blind stinkbug, but also it provides a reference for the identification and control of other pests.