计算机工程与应用
計算機工程與應用
계산궤공정여응용
COMPUTER ENGINEERING AND APPLICATIONS
2014年
7期
154-157
,共4页
王美丽%牛晓静%张宏鸣%赵建邦%何东健
王美麗%牛曉靜%張宏鳴%趙建邦%何東健
왕미려%우효정%장굉명%조건방%하동건
小麦病害%特征提取%图像识别
小麥病害%特徵提取%圖像識彆
소맥병해%특정제취%도상식별
wheat disease%feature extraction%image recognition
选取小麦叶部常见病害图像,利用图像处理技术进行病害种类的识别。将图像由RGB彩色空间转换到HSV颜色空间,提取相关的颜色特征(色相和饱和度),接着提取几何形状特征(周长、面积、矩形度、似圆度、偏心率等),通过分析样本图像得到每种病害的特征值范围,利用特征值对未知样本进行病害识别。系统以白粉病和锈病(叶锈病、条锈病和秆锈病)为研究对象,根据颜色特征对白粉病和锈病加以识别,然后根据几何形状特征对叶锈病、条锈病和秆锈病进行识别,操作简单方便,识别准确率达96%以上。实验结果表明,选取的颜色特征和几何形状特征对4种小麦叶部常见病害的识别是有效且可行的。
選取小麥葉部常見病害圖像,利用圖像處理技術進行病害種類的識彆。將圖像由RGB綵色空間轉換到HSV顏色空間,提取相關的顏色特徵(色相和飽和度),接著提取幾何形狀特徵(週長、麵積、矩形度、似圓度、偏心率等),通過分析樣本圖像得到每種病害的特徵值範圍,利用特徵值對未知樣本進行病害識彆。繫統以白粉病和鏽病(葉鏽病、條鏽病和稈鏽病)為研究對象,根據顏色特徵對白粉病和鏽病加以識彆,然後根據幾何形狀特徵對葉鏽病、條鏽病和稈鏽病進行識彆,操作簡單方便,識彆準確率達96%以上。實驗結果錶明,選取的顏色特徵和幾何形狀特徵對4種小麥葉部常見病害的識彆是有效且可行的。
선취소맥협부상견병해도상,이용도상처리기술진행병해충류적식별。장도상유RGB채색공간전환도HSV안색공간,제취상관적안색특정(색상화포화도),접착제취궤하형상특정(주장、면적、구형도、사원도、편심솔등),통과분석양본도상득도매충병해적특정치범위,이용특정치대미지양본진행병해식별。계통이백분병화수병(협수병、조수병화간수병)위연구대상,근거안색특정대백분병화수병가이식별,연후근거궤하형상특정대협수병、조수병화간수병진행식별,조작간단방편,식별준학솔체96%이상。실험결과표명,선취적안색특정화궤하형상특정대4충소맥협부상견병해적식별시유효차가행적。
This paper selects four common diseases of wheat leaf images, using image processing techniques to identify different types of disease. Firstly, the RGB color space is converted to HSV color space, the relevant color characteristics (hue and saturation)are extracted, and then geometry features(perimeter area, squareness, roundness, eccentricity, etc.) are extracted. To obtain the eigenvalues of each disease range, the sample images are analyzed, and then the eigenvalues of the unknown samples are used to identify different kinds of wheat diseases. This research takes powdery mildew and rust (leaf rust, stripe rust and stem rust)as research objects. Based on color characteristics, the powdery mildew and rust are identified, according to the shape characteristics, leaf rust, stripe rust and stem rust are identified. The proposed method is simple and convenient with an identification rate of more than 96%. The experimental results show that the chosen color and shape features of these four common diseases are valid and feasible for wheat diseases identification.