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[玉米多光谱图像精准分割与叶绿素指数估计研究]

[Research on maize multispectral image accurate segmentation and chlorophyll index estimation].

作者信息

Wu Qian, Sun Hong, Li Min-zan, Song Yuan-yuan, Zhang Yan-e

出版信息

Guang Pu Xue Yu Guang Pu Fen Xi. 2015 Jan;35(1):178-83.

Abstract

In order to rapidly acquire maize growing information in the field, a non-destructive method of maize chlorophyll content index measurement was conducted based on multi-spectral imaging technique and imaging processing technology. The experiment was conducted at Yangling in Shaanxi province of China and the crop was Zheng-dan 958 planted in about 1 000 m X 600 m experiment field. Firstly, a 2-CCD multi-spectral image monitoring system was available to acquire the canopy images. The system 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 algorithm, 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 segmented 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-infrared (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 detecting model based on partial least squares regression method (PLSR) was built with detecting R2=0. 5960 and predicting R2= 0. 568 5. It was feasible to diagnose chlorophyll index of maize based on multi-spectral images.

摘要

为了快速获取田间玉米生长信息,基于多光谱成像技术和图像处理技术开展了玉米叶绿素含量指数的无损测量方法研究。试验在中国陕西省杨凌进行,作物为种植于约1000米×600米试验田的郑单958。首先,利用一套双电荷耦合器件(2-CCD)多光谱图像监测系统获取冠层图像。该系统基于一个二向色棱镜,可精确分离可见光(蓝光(B)、绿光(G)、红光(R):400 - 700纳米)和近红外光(NIR,760 - 1000纳米)波段。多光谱图像通过垂直固定于地面、垂直距离为2米且视角为50°的系统输出为RGB图像和NIR图像。同步测量每个样本的叶绿素仪(SPAD)指数以表征叶绿素含量指数。其次,采用自适应平滑滤波算法对图像进行平滑处理后,选取NIR玉米图像将玉米叶片与背景分离,因为植物与土壤背景在灰度直方图上存在较大差异。NIR图像分割算法分初步分割和精确分割两步进行:(1)讨论了大津法(OTSU)图像分割方法和可变阈值算法的结果。结果表明,后者在玉米植株和杂草分割方面表现更佳。因此,选择基于局部统计的可变阈值算法进行图像初步分割。利用膨胀和腐蚀操作对分割后的图像进行优化。(2)使用区域标记算法从土壤和杂草背景中分割玉米植株,准确率达95.59%。然后,分别在R、G和B波段对玉米冠层的多光谱图像进行精确分割。第三,基于分割后的可见光和NIR图像提取图像参数。计算每个通道的平均灰度值,包括红色(ARed)、绿色(AGreen)、蓝色(ABlue)和近红外(ANIR)。同时,应用了遥感中广泛使用的植被指数(归一化植被指数(NDVI)、比值植被指数(RVI)和归一化绿度指数(NDGI))。建立了基于偏最小二乘回归法(PLSR)的叶绿素指数检测模型,检测决定系数(R2)=0.5960,预测决定系数(R2)=0.5685。基于多光谱图像诊断玉米叶绿素指数是可行的。

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