农业工程学报
農業工程學報
농업공정학보
2013年
24期
181-189
,共9页
王访%廖桂平%王晓乔%李建辉%李锦卫%施文
王訪%廖桂平%王曉喬%李建輝%李錦衛%施文
왕방%료계평%왕효교%리건휘%리금위%시문
图像处理%图像分割%分形%特征提取%模糊C均值聚类%油菜缺素%局部多重分形去趋势波动分析
圖像處理%圖像分割%分形%特徵提取%模糊C均值聚類%油菜缺素%跼部多重分形去趨勢波動分析
도상처리%도상분할%분형%특정제취%모호C균치취류%유채결소%국부다중분형거추세파동분석
image processing%image segmentation%fractals%feature extraction%fuzzy c-means clustering%local multifractal detrended fluctuation analysis%nutrient deficiency of rapeseed (Brassica napus L)
为描述油菜缺素叶片图像的特征,该文提出了一种基于多重分形去趋势波动分析方法,即局部多重分形去趋势波动分析。该方法确定的hij(q)指数能有效刻画叶片图像每个像素点的多重分形特征,并以所有像素点hij(q)的平均值Lhq表征每幅图像的多重分形特征。选取4种油菜缺素叶片图像进行试验,结果表明所提取局部多重分形去趋势波动平均指数Lhq能很好地区分叶片,并通过方差分析指出当q={-10,-9,-8,-7,-6}时的Lhq区分效果最好。最后基于每个像素点的hij(q)指数利用模糊C均值聚类对缺镁油菜叶片图像进行模糊分割,并与传统的灰度值分割及经典的基于容量测度的H?lder指数分割进行了对比试验,结果表明以上述hij(q)为特征具有最佳的分割效果。
為描述油菜缺素葉片圖像的特徵,該文提齣瞭一種基于多重分形去趨勢波動分析方法,即跼部多重分形去趨勢波動分析。該方法確定的hij(q)指數能有效刻畫葉片圖像每箇像素點的多重分形特徵,併以所有像素點hij(q)的平均值Lhq錶徵每幅圖像的多重分形特徵。選取4種油菜缺素葉片圖像進行試驗,結果錶明所提取跼部多重分形去趨勢波動平均指數Lhq能很好地區分葉片,併通過方差分析指齣噹q={-10,-9,-8,-7,-6}時的Lhq區分效果最好。最後基于每箇像素點的hij(q)指數利用模糊C均值聚類對缺鎂油菜葉片圖像進行模糊分割,併與傳統的灰度值分割及經典的基于容量測度的H?lder指數分割進行瞭對比試驗,結果錶明以上述hij(q)為特徵具有最佳的分割效果。
위묘술유채결소협편도상적특정,해문제출료일충기우다중분형거추세파동분석방법,즉국부다중분형거추세파동분석。해방법학정적hij(q)지수능유효각화협편도상매개상소점적다중분형특정,병이소유상소점hij(q)적평균치Lhq표정매폭도상적다중분형특정。선취4충유채결소협편도상진행시험,결과표명소제취국부다중분형거추세파동평균지수Lhq능흔호지구분협편,병통과방차분석지출당q={-10,-9,-8,-7,-6}시적Lhq구분효과최호。최후기우매개상소점적hij(q)지수이용모호C균치취류대결미유채협편도상진행모호분할,병여전통적회도치분할급경전적기우용량측도적H?lder지수분할진행료대비시험,결과표명이상술hij(q)위특정구유최가적분할효과。
Fertilization levels play a critical role in crops’ growth. As a vital organ of rapeseed, leaves can well reflect the nutritional level, and their images are always processed and analyzed by a computer vision system. The texture feature of the leaves’ images is very important to become a key indicator to describe the nutritional status for the rapeseeds. In recent years, multifractal methods were used to extract its features for describing a texture image. The traditional type of multifractal analysis (MFA) was calculated based on the standard partition function multifractal formalism, which describes stationary measurements. For a crop image collected in field crops, the surface itself is hardly stationary and whose gray scale volatility is likely to be more bizarre. By this token, this is not always a valid choice to analysis them based on MFA. A novel method: local multifractal detrended fluctuation (LMF-DFA) analysis was proposed in this paper to extract texture feature of every pixel for a self-similar surface based on the method of 2-D multifractal detrended fluctuation analysis (MF-DFA), which can well portray multifractal features for a non-stationary surface. A set of new multifractal descriptors, namely the local multifractal fluctuation exponents hij(q) were defined to portray every pixels’ feature effectively, the LMF-DFA exponents were calculated by a slipping window of sizes w×w. In our study, we took w=11. The components of the LMF-DFA spectrum which are used to distinguish between different textures can be considered statistically significant. As an important application, we applied the method to disclose a rapeseed leaf’s image of nutrient deficiency. Four kinds of nutrient deficiency of rapeseed leaf’s images, namely, Nitrogen deficiency, Phosphorus deficiency, Potassium deficiency, and Magnesium deficiency, were chosen for our two experiments. In order to extract real and accurate information by the proposed method, in every image the background was are removed, and circumscribed by a minimum bounding rectangle, which is the so-called standardization process. In our first experiment, initially, for each image, we calculated a set of hij(q) for the value of q=-10 to 10. And then we used Lhq which is an average of the hij(q) over all pixels, to represent the multifractal feature for each image. The result illustrated that the calculated Lhq exponents can differentiate them well. Meanwhile, it points out that the discriminant effect of Lhq exponents are best when the value q={-10,-9,-8,-7,-6}by an analysis of variance. In our second experiment, fuzzy C-means clustering was used to process fuzzy segmentation for the Magnesium deficiency of a rapeseed leaf’s image, which contains some representative regions of nutrient deficiency. Both the proposed hij(q) exponents and other two characteristics which are the traditional gray value and the classic H?lder exponent calculated by standard multifractal analysis were applied to the segmentation experiment. The comparison results demonstrated that the LMF-DFA estimation can provide most robust segmentations. The meaningful work provides a theoretical and practical method for the identification and diagnosis of a crop leaf’s nutrient deficiency. Moreover, it provides a precise positioning method for key areas of crop leaves’ nutrient deficiency.