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Recognition of wood surface defects with near infrared spectroscopy and machine vision 被引量:18

Recognition of wood surface defects with near infrared spectroscopy and machine vision
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摘要 To improve the accuracy in recognizing defects on wood surfaces,a method fusing near infrared spectroscopy(NIR)and machine vision was examined.Larix gmelinii was selected as the raw material,and the experiments focused on the ability of the model to sort defects into four types:live knots,dead knots,pinholes,and cracks.Sample images were taken using an industrial camera,and a morphological algorithm was applied to locate the position of the defects.A portable near infrared spectrometer(900–1800 nm)collected the spectra of these positions.In addition,principal component analysis was utilized on these variables from spectral information and principal component vectors were extracted as the inputs of the model.The results show that a back propagation neural network model exhibited better discrimination accuracy of 92.7%for the training set and 92.0%for the test set.The research reveals that the NIR fusing machine vision is a feasible tool for detecting defects on board surfaces. To improve the accuracy in recognizing defects on wood surfaces, a method fusing near infrared spectroscopy(NIR) and machine vision was examined. Larix gmelinii was selected as the raw material, and the experiments focused on the ability of the model to sort defects into four types: live knots, dead knots, pinholes, and cracks. Sample images were taken using an industrial camera, and a morphological algorithm was applied to locate the position of the defects. A portable near infrared spectrometer(900–1800 nm) collected the spectra of these positions. In addition, principal component analysis was utilized on these variables from spectral information and principal component vectors were extracted as the inputs of the model. The results show that a back propagation neural network model exhibited better discrimination accuracy of92.7% for the training set and 92.0% for the test set. The research reveals that the NIR fusing machine vision is a feasible tool for detecting defects on board surfaces.
出处 《Journal of Forestry Research》 SCIE CAS CSCD 2019年第6期2379-2386,共8页 林业研究(英文版)
基金 supported by the State Administration of Forestry and Grass of the 948 Project of China(Grant No.2015-4-52) the support of the Fundamental Research Funds for the Central Universities(Grant No.2572017DB05) the support of the Natural Science Foundation of Heilongjiang Province(Grant No.C2017005)
关键词 WOOD BOARD surface DEFECTS Near infrared spectroscopy Machine VISION ACCURACY of RECOGNITION Wood board surface defects Near infrared spectroscopy Machine vision Accuracy of recognition
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