Wood Species Classification Utilizing Ensembles of Convolutional Neural Networks Established by Near-Infrared Spectra and Images Acquired from Korean Softwood Lumber

In our previous study, we investigated the use of ensemble models based on LeNet and MiniVGGNet to classify the images of transverse and longitudinal surfaces of five Korean softwoods (cedar, cypress, Korean pine, Korean red pine, and larch). It had accomplished an average F1 score of more than 98%;...

Full description

Saved in:
Bibliographic Details
Published inJournal of the Korean Wood Science and Technology Vol. 47; no. 4; pp. 385 - 392
Main Authors Yang, Sang-Yun, Lee, Hyung Gu, Park, Yonggun, Chung, Hyunwoo, Kim, Hyunbin, Park, Se-Yeong, Choi, In-Gyu, Kwon, Ohkyung, Yeo, Hwanmyeong
Format Journal Article
LanguageEnglish
Published 한국목재공학회 01.07.2019
Subjects
Online AccessGet full text
ISSN1017-0715
2233-7180
2233-7180
DOI10.5658/WOOD.2019.47.4.385

Cover

More Information
Summary:In our previous study, we investigated the use of ensemble models based on LeNet and MiniVGGNet to classify the images of transverse and longitudinal surfaces of five Korean softwoods (cedar, cypress, Korean pine, Korean red pine, and larch). It had accomplished an average F1 score of more than 98%; the classification performance of the longitudinal surface image was still less than that of the transverse surface image. In this study, ensemble methods of two different convolutional neural network models (LeNet3 for smartphone camera images and NIRNet for NIR spectra) were applied to lumber species classification. Experimentally, the best classification performance was obtained by the averaging ensemble method of LeNet3 and NIRNet. The average F1 scores of the individual LeNet3 model and the individual NIRNet model were 91.98% and 85.94%, respectively. By the averaging ensemble method of LeNet3 and NIRNet, an average F1 score was increased to 95.31%. KCI Citation Count: 1
Bibliography:http://www.jwst.or.kr/past/xml_view.asp?a_key=3692980&n_key=4&v_key=47
ISSN:1017-0715
2233-7180
2233-7180
DOI:10.5658/WOOD.2019.47.4.385