农业工程学报
農業工程學報
농업공정학보
2013年
2期
192-198
,共7页
数据挖掘%聚类算法%图像处理%杂草识别%多光谱图像%多特征识别
數據挖掘%聚類算法%圖像處理%雜草識彆%多光譜圖像%多特徵識彆
수거알굴%취류산법%도상처리%잡초식별%다광보도상%다특정식별
data mining%clustering algorithms%image processing%weed recognition%multi-spectral image%multi-feature recognition
为满足变量喷洒对杂草识别正确率的要求,提出一种基于多光谱图像和数据挖掘的杂草多特征识别方法.首先对多光谱成像仪获取的玉米与杂草图像从 CIR 转换到 Lab 颜色空间,用 K-means 聚类算法将图像分为土壤和绿色植物,随后用形态学处理提取出植物叶片图像,在此基础上提取叶片形状、纹理及分形维数3类特征,并基于 C4.5算法对杂草分别进行单特征和多特征组合的分类识别.试验结果表明,多特征识别率比单特征识别率高,3类特征组合后的识别率最高达到96.3%.为验证该文提出方法的有效性,将 C4.5算法与 BP 算法以及 SVM 算法进行比较,试验结果表明 C4.5算法的平均识别率高于另2种算法,该文提出的田间杂草快速识别方法是有效可行的.该文为玉米苗期精确喷洒除草剂提供技术依据.
為滿足變量噴灑對雜草識彆正確率的要求,提齣一種基于多光譜圖像和數據挖掘的雜草多特徵識彆方法.首先對多光譜成像儀穫取的玉米與雜草圖像從 CIR 轉換到 Lab 顏色空間,用 K-means 聚類算法將圖像分為土壤和綠色植物,隨後用形態學處理提取齣植物葉片圖像,在此基礎上提取葉片形狀、紋理及分形維數3類特徵,併基于 C4.5算法對雜草分彆進行單特徵和多特徵組閤的分類識彆.試驗結果錶明,多特徵識彆率比單特徵識彆率高,3類特徵組閤後的識彆率最高達到96.3%.為驗證該文提齣方法的有效性,將 C4.5算法與 BP 算法以及 SVM 算法進行比較,試驗結果錶明 C4.5算法的平均識彆率高于另2種算法,該文提齣的田間雜草快速識彆方法是有效可行的.該文為玉米苗期精確噴灑除草劑提供技術依據.
위만족변량분쇄대잡초식별정학솔적요구,제출일충기우다광보도상화수거알굴적잡초다특정식별방법.수선대다광보성상의획취적옥미여잡초도상종 CIR 전환도 Lab 안색공간,용 K-means 취류산법장도상분위토양화록색식물,수후용형태학처리제취출식물협편도상,재차기출상제취협편형상、문리급분형유수3류특정,병기우 C4.5산법대잡초분별진행단특정화다특정조합적분류식별.시험결과표명,다특정식별솔비단특정식별솔고,3류특정조합후적식별솔최고체도96.3%.위험증해문제출방법적유효성,장 C4.5산법여 BP 산법이급 SVM 산법진행비교,시험결과표명 C4.5산법적평균식별솔고우령2충산법,해문제출적전간잡초쾌속식별방법시유효가행적.해문위옥미묘기정학분쇄제초제제공기술의거.
Field weed detection is one of the key problems in realizing the variable precision applying pesticide to take place of the herbicide. Image-based weed classification and spectral information of plants are useful to detect weeds in real-time using multi-spectral features. Aimed to meet the identification accuracy requirements of variable spraying on weed, a new method using decision tree algorithm-C4.5 of data mining was developed to discriminate or classify crop and weeds by the multi-spectral images. The multi-spectral images of weeds and maize were captured by MS4100 Duncan Camera in the test field of Northwest Agriculture and Forestry University on May, 2012, and transformed from CIR color space to Lab systems, which can distinguish different quantized color and measure the Euclidean distance of different colors. Then vegetation was segmented from soil using K-means clustering algorithm. Mathematical morphology was used to fill small holes among the extracted vegetation leaves, and connect the uncompleted contour line of the discontinuous edges which may be caused by noise, occlusion and other factors. Contour tracing was used to get the contours of leaves. After these image processing, shape features, texture features and fractal dimensions of the vegetation were extracted. A random sample of 120 images from all 240 images were involved in this study as the training samples, 20 images from 40 images were used as the test samples. The results of statistic analysis showed that multi-feature combining with shape feature, texture feature and fractal dimension together achieved the highest recognition rate of 96.3%, compared to the single feature recognition rate of 75.0%. To validate the feasibility of this study, C4.5 algorithm was compared with BP (error back propagation) algorithm and SVM (support vector machine) algorithm in recognizing multi-feature. The experimental results showed the average recognition rates were 92.5% and 95.0%for BP and SVM algorithms, respectively. The results showed that the average recognition rate of C4.5 algorithm was higher than that of the other two algorithms and it was an effective and feasible method to rapidly identify the weeds. The results provide a technical basis for accurate spraying on corn seedling. Further studies could be conducted in weed recognition, such as testing robust algorithms in the real complex environment (e.g. the uneven illumination, random distribution of the vegetation growing position), and discussing decision level fusion of feature data to further reduce the dimensions of data.