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SVM自助重加权采样的蚕茧雌雄特征波长选择
引用本文:陈楚汉,钟杨生,王先燕,赵懿琨,代芬.SVM自助重加权采样的蚕茧雌雄特征波长选择[J].光谱学与光谱分析,2022,42(4):1173-1178.
作者姓名:陈楚汉  钟杨生  王先燕  赵懿琨  代芬
作者单位:1. 华南农业大学电子工程学院,广东 广州 510642
2. 华南农业大学动物科学学院,广东 广州 510642
3. 广东省蚕业技术推广中心,广东 广州 510640
基金项目:国家自然科学基金项目(61675003);;广州市科技计划项目(201707010346);广州市科技计划项目(202103000090)资助;
摘    要:使用近红外光谱鉴别蚕茧雌雄设备成本较高,挑选有用特征可以减少成本.雌雄蚕茧的近红外光谱存在着共线性的关系,因此提出了一种包裹式的特征选择方法,基于支持向量机的自助重加权采样(BRS-SVM)的特征选择方法.使用NirQuest512近红外光谱仪采集了蚕茧的漫透射近红外光谱.用试验集的全波段建模得到特征重要度热图,并通过...

关 键 词:蚕茧  近红外光谱  特征选择
收稿时间:2021-07-13

Feature Selection Algorithm for Identification of Male and Female Cocoons Based on SVM Bootstrapping Re-Weighted Sampling
CHEN Chu-han,ZHONG Yang-sheng,WANG Xian-yan,ZHAO Yi-kun,DAI Fen.Feature Selection Algorithm for Identification of Male and Female Cocoons Based on SVM Bootstrapping Re-Weighted Sampling[J].Spectroscopy and Spectral Analysis,2022,42(4):1173-1178.
Authors:CHEN Chu-han  ZHONG Yang-sheng  WANG Xian-yan  ZHAO Yi-kun  DAI Fen
Institution:1. College of Electronic Engineering,South China Agricultural University,Guangzhou 510642, China 2. College of Animal Science,South China Agricultural University,Guangzhou 510642, China 3. Guangdong Sericulture Technology Promotion Center,Guangzhou 510640, China
Abstract:The cost of identifying male and female cocoons by NIR is high,and the cost can be reduced by selecting useful features. Since there is a nonlinear relationship between the NIR spectra of female and male cocoons, a wrapper feature selection method, Bootstrapping Re-weighted Sampling Support Vector Machines (BRS-SVM), was proposed. The diffuse transmission NIR spectra of silkworm cocoons were collected by NirQuest512 NIR spectrometer. The heat map of characteristic importance was obtained by modeling the whole band of the test set, and the heat map obtained the range of important characteristic bands. Then, in the range of important characteristic bands, the single band features and continuous band area features were selected by BRS-SVM, Model-based ranking support vector machines (MBR-SVM), Model-based ranking Logistic Regression feature sorting method (MBR-LR), Recursive feature elimination (RFE), successive projections algorithm(SPA), Genetic Algorithm(GA), and then the support vector machines (SVM) and Logistic Regression (LR) sex classification models were established respectively. According to the characteristic importance heat map, it is found that the important area of male and female classification of silkworm cocoon was within 900~1 399 nm. We used this band to build the SVM model, and achieved 99.40% accuracy. BRS-SVM was used to select 5 single-band features. The accuracy of the test set is 89.56%, which is 2%~4% higher than other feature selection methods. RS-SVM was used to select 27 single-band features, and the accuracy of the test set of the SVM gender classification model was 94.97%, which reached the requirements of production conditions. The accuracy of modeling test set by BRS-SVM was 94.43% for 14 continuous band features. In the case of selecting a small number of features, our proposed BRS-SVM is superior to other methods. Using BRS-SVM to select a small number of features, we can establish a good performance of the female and male cocoon classification model, effectively reduce the cost, has important practical significance.
Keywords:Cocoons  Near infrared spectrum  Feature selection  
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