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基于支持向量机的田间玉米和杂草苗期光谱识别

[SVM-based spectral recognition of corn and weeds at seedling stage in fields].

作者信息

Deng Wei, Zhang Lu-Da, He Xiong-Kui, Mueller J, Zeng Ai-Jun, Song Jian-Li, Liu Ya-Jia, Zhou Ji-Zhong, Chen Ji, Wang Xu

机构信息

School of Science, China Agricultural University, Beijing 100193, China.

出版信息

Guang Pu Xue Yu Guang Pu Fen Xi. 2009 Jul;29(7):1906-10.

Abstract

A handheld FieldSpec 3 Spectroradiometer manufactured by ASD Incorporated Company in USA was used to measure the spectroscopic data of canopies of seedling corns, Dchinochloa crasgalli, and Echinochloa crusgalli weeds within the 350-2 500 nm wavelength range in the field. Each canopy was measured five times continuously. The five original spectroscopic data were averaged over the whole wavelength range in order to eliminate random noise. Then the averaged original data were converted into reflectance data, and the unsmooth parts of reflectance spectral curves with large noise were removed. The effective wavelength range for spectral data process was selected as 350-1 300 and 1 400-1 800 nm. Support vector machine (SVM) was chosen as a method of pattern recognition in this paper. SVM has the advantages of solving the problem of small sample size, being able to reach a global optimization, minimization of structure risk, and having higher generalization capability. Two classes of classifier SVM models were built up respectively using "linear", "polynomial", "RBF"(radial basis function), and "mlp (multilayer perception)" kernels. Comparison of different kernel functions for SVM shows that higher precision can be obtained by using "polynomial" kernel function with 3 orders. The accuracy can be above 80%, but the SV ratio is relatively low. On the basis of two-class classification model, taking use of voting procedure, a model based on one-against-one-algorithm multi-class classification SVM was set up. The accuracy reaches 80%. Although the recognition accuracy of the model based on SVM algorithm is not above 90%, the authors still think that the research on weeds recognition using spectrum technology combining SVM method discussed in this paper is tremendously significant. Because the data used in this study were measured over plant canopies outdoor in the field, the measurement is affected by illumination intensity, soil background, atmosphere temperature and instrument accuracy. This method proposes a kind of research ideology and application foundation for weeds recognition in the field.

摘要

使用美国 ASD 公司生产的手持式 FieldSpec 3 光谱辐射仪,在田间测量 350 - 2500 nm 波长范围内玉米幼苗冠层、稗草和光头稗草的光谱数据。每个冠层连续测量 5 次。将这 5 组原始光谱数据在整个波长范围内求平均值,以消除随机噪声。然后将平均后的原始数据转换为反射率数据,并去除反射率光谱曲线中噪声较大的不光滑部分。光谱数据处理的有效波长范围选为 350 - 1300 nm 和 1400 - 1800 nm。本文选择支持向量机(SVM)作为模式识别方法。SVM 具有解决小样本问题、能够实现全局优化、结构风险最小化以及具有较高泛化能力等优点。分别使用“线性”“多项式”“RBF”(径向基函数)和“mlp(多层感知器)”核建立了两类分类器 SVM 模型。对 SVM 不同核函数的比较表明,使用 3 阶“多项式”核函数可获得更高的精度。准确率可达 80%以上,但支持向量比相对较低。在二类分类模型的基础上,采用投票法,建立了基于一对一算法的多类分类 SVM 模型。准确率达到 80%。虽然基于 SVM 算法的模型识别准确率未达到 90%以上,但作者仍认为本文讨论的结合 SVM 方法的光谱技术用于杂草识别的研究具有重大意义。由于本研究中使用的数据是在田间室外植物冠层上测量的,测量受光照强度、土壤背景、大气温度和仪器精度的影响。该方法为田间杂草识别提出了一种研究思路和应用基础。

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