光谱学与光谱分析
光譜學與光譜分析
광보학여광보분석
SPECTROSCOPY AND SPECTRAL ANALYSIS
2015年
1期
178-183
,共6页
吴倩%孙红%李民赞%宋媛媛%张彦娥
吳倩%孫紅%李民讚%宋媛媛%張彥娥
오천%손홍%리민찬%송원원%장언아
多光谱图像%局部阈值处理%区域标记%叶绿素
多光譜圖像%跼部閾值處理%區域標記%葉綠素
다광보도상%국부역치처리%구역표기%협록소
M ultispectral images%Local threshold processing%Regional marker%Image segmentation%Chlorophyll index
为了快速获取大田玉米作物长势信息,基于多光谱图像开展了大田玉米叶绿素指标的非破坏性诊断研究。应用自主开发的2-CCD多光谱图像感知系统,在田间采集玉米冠层可见光[Blue(B),Green(G), Red(R);400~700 nm]和近红外(Near-infrared :NIR ,760~1000 nm)图像,并使用SPAD同步测量样本叶绿素指标。采集后图像经自适应平滑滤波处理后,进行图像玉米植株提取。为了选择最优算法实现玉米植株与杂草、土壤背景的分割,首先比较了最大类间方差(OTSU)分割算法和局部阈值处理分割算法,选取了基于局部统计的可变阈值处理方法对玉米NIR图像进行初步分割,进而采用区域标记算法进行精细分割,分割准确率达95.59%。将分割结果应用于玉米植株可见光图像R ,G ,B各通道,从而实现了玉米植株多光谱图像中可见光图像的整体分割。基于分割后R ,G ,B和NIR四个通道的玉米冠层图像,提取了各通道图像灰度均值(ANIR ,ARed ,AGreen和 ABlue )并计算了归一化植被指数(NDVI)、比值植被指数(RVI)和绿色归一化植被指数(NDGI)作为光谱特征参数,建立了玉米冠层叶绿素指标诊断的偏最小二乘法回归模型。结果表明,建模 R2达0.5960,预测R2达0.5685,该方法通过玉米多光谱图像特征参数评估叶片叶绿素含量,可为大田玉米长势监测提供支持。
為瞭快速穫取大田玉米作物長勢信息,基于多光譜圖像開展瞭大田玉米葉綠素指標的非破壞性診斷研究。應用自主開髮的2-CCD多光譜圖像感知繫統,在田間採集玉米冠層可見光[Blue(B),Green(G), Red(R);400~700 nm]和近紅外(Near-infrared :NIR ,760~1000 nm)圖像,併使用SPAD同步測量樣本葉綠素指標。採集後圖像經自適應平滑濾波處理後,進行圖像玉米植株提取。為瞭選擇最優算法實現玉米植株與雜草、土壤揹景的分割,首先比較瞭最大類間方差(OTSU)分割算法和跼部閾值處理分割算法,選取瞭基于跼部統計的可變閾值處理方法對玉米NIR圖像進行初步分割,進而採用區域標記算法進行精細分割,分割準確率達95.59%。將分割結果應用于玉米植株可見光圖像R ,G ,B各通道,從而實現瞭玉米植株多光譜圖像中可見光圖像的整體分割。基于分割後R ,G ,B和NIR四箇通道的玉米冠層圖像,提取瞭各通道圖像灰度均值(ANIR ,ARed ,AGreen和 ABlue )併計算瞭歸一化植被指數(NDVI)、比值植被指數(RVI)和綠色歸一化植被指數(NDGI)作為光譜特徵參數,建立瞭玉米冠層葉綠素指標診斷的偏最小二乘法迴歸模型。結果錶明,建模 R2達0.5960,預測R2達0.5685,該方法通過玉米多光譜圖像特徵參數評估葉片葉綠素含量,可為大田玉米長勢鑑測提供支持。
위료쾌속획취대전옥미작물장세신식,기우다광보도상개전료대전옥미협록소지표적비파배성진단연구。응용자주개발적2-CCD다광보도상감지계통,재전간채집옥미관층가견광[Blue(B),Green(G), Red(R);400~700 nm]화근홍외(Near-infrared :NIR ,760~1000 nm)도상,병사용SPAD동보측량양본협록소지표。채집후도상경자괄응평활려파처리후,진행도상옥미식주제취。위료선택최우산법실현옥미식주여잡초、토양배경적분할,수선비교료최대류간방차(OTSU)분할산법화국부역치처리분할산법,선취료기우국부통계적가변역치처리방법대옥미NIR도상진행초보분할,진이채용구역표기산법진행정세분할,분할준학솔체95.59%。장분할결과응용우옥미식주가견광도상R ,G ,B각통도,종이실현료옥미식주다광보도상중가견광도상적정체분할。기우분할후R ,G ,B화NIR사개통도적옥미관층도상,제취료각통도도상회도균치(ANIR ,ARed ,AGreen화 ABlue )병계산료귀일화식피지수(NDVI)、비치식피지수(RVI)화록색귀일화식피지수(NDGI)작위광보특정삼수,건립료옥미관층협록소지표진단적편최소이승법회귀모형。결과표명,건모 R2체0.5960,예측R2체0.5685,해방법통과옥미다광보도상특정삼수평고협편협록소함량,가위대전옥미장세감측제공지지。
In order to rapidly acquire maize growing information in the field ,a non-destructive method of maize chlorophyll con-tent index measurement was conducted based on multi-spectral imaging technique and imaging processing technology .The exper-iment was conducted at Yangling in Shaanxi province of China and the crop was Zheng-dan 958 planted in about 1 000 m × 600 m experiment field .Firstly ,a 2-CCD multi-spectral image monitoring system was available to acquire the canopy images .The sys-tem was based on a dichroic prism ,allowing precise separation of the visible (Blue (B) ,Green (G) ,Red (R):400~700 nm) and near-infrared (NIR ,760~1 000 nm) band .The multispectral images were output as RGB and NIR images via the system vertically fixed to the ground with vertical distance of 2 m and angular field of 50° .SPAD index of each sample was measured synchronously to show the chlorophyll content index .Secondly ,after the image smoothing using adaptive smooth filtering algo-rithm ,the NIR maize image was selected to segment the maize leaves from background ,because there was a big difference showed in gray histogram between plant and soil background .The NIR image segmentation algorithm was conducted following steps of preliminary and accuracy segmentation :(1) The results of OTSU image segmentation method and the variable threshold algorithm were discussed .It was revealed that the latter was better one in corn plant and weed segmentation .As a result ,the variable threshold algorithm based on local statistics was selected for the preliminary image segmentation .The expansion and corrosion were used to optimize the segmented image .(2) The region labeling algorithm was used to segment corn plants from soil and weed background with an accuracy of 95.59% .And then ,the multi-spectral image of maize canopy was accurately seg-mented in R ,G and B band separately .Thirdly ,the image parameters were abstracted based on the segmented visible and NIR images .The average gray value of each channel was calculated including red (ARed ) ,green (AGreen ) ,blue (ABlue ) ,and near-infra-red (ANIR ) .Meanwhile ,the vegetation indices (NDVI (normalized difference vegetation index ) ,RVI (ratio vegetation index ) , and NDGI(normalized difference green index )) which are widely used in remote sensing were applied .The chlorophyll index de-tecting model based on partial least squares regression method (PLSR) was built with detecting R2 =0.596 0 and predicting R2 =0.568 5 .It was feasible to diagnose chlorophyll index of maize based on multi-spectral images .