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Softwood Species identification using Convolutional Neural Network

첫 페이지 보기
  • 발행기관
    강원대학교 산림과학연구소 바로가기
  • 간행물
    강원대학교 산림과학연구소 학술대회 바로가기
  • 통권
    2022 International symposium of Institute of Forest Science for the 40th Anniversary of College of Forest and Environment Science (2022.10)바로가기
  • 페이지
    pp.85-85
  • 저자
    Jong-Ho Kim, Byantara Darsan Purusatama, Prasetia Denni, Alvin Muhammad Savero, Intan Fajar Suri, Seung-Hwan Lee, Nam-Hun Kim
  • 언어
    영어(ENG)
  • URL
    https://www.earticle.net/Article/A450459

원문정보

초록

영어
In order to improve the accessibility of wood species identification, the four domestic and six imported softwood species were classified using deep learning method. The cross-section micrographs were used as a dataset; which 1,535 images of 40x micrographs with earlywood and latewood, and 2,000 images of 200x micrographs for earlywood and latewood each. The classification accuracy and loss rate of 10 species were compared using the four convolutional neural network models such as modified CNN, GoogLeNet, VGG16, and ResNet. In verifying the classification accuracy and loss rate by model, the influencing factors, such as epochs, collected part of the dataset, and dataset augmentation, were analyzed. The modified CNN and GoogLeNet models increased classification accuracy in proportion to the number of epochs, achieving more than 95% classification accuracy in the final stage. At the same time, the loss rate decreased with decreasing the number of epochs. VGG16 model showed a low classification accuracy of 20~30% and a high loss rate regardless of the number of epochs during learning under the same conditions as the other models. The ResNet model showed a high classification accuracy of over 90%, with a low loss rate during the training process. However, classification accuracy decreased to 20~30%, with a high loss rate when the test process. As a result of analyzing the general trends in the four models, the classification accuracy increased with increasing the number of epochs in the latewood and total dataset. In contrast, the earlywood dataset didn't show any tendency. The dataset augmentation was not significantly correlated with the classification accuracy and loss rate. Based on these results, modified CNN and GoogLeNet models among the four deep learning models showed excellent wood species classification performance. Further, it is expected that the two models can be applied to identify unknown ten softwood species.

키워드

Species identification Species classification Convolutional Neural Network Deep learning

저자

  • Jong-Ho Kim [ College of Forest and Environmental Sciences, Kangwon National University, Chuncheon 24341, Republic of Korea ]
  • Byantara Darsan Purusatama [ Institute of Forest Science, Kangwon National University, Chuncheon 24341, Republic of Korea ]
  • Prasetia Denni [ College of Forest and Environmental Sciences, Kangwon National University, Chuncheon 24341, Republic of Korea ]
  • Alvin Muhammad Savero [ College of Forest and Environmental Sciences, Kangwon National University, Chuncheon 24341, Republic of Korea ]
  • Intan Fajar Suri [ Department of Forestry, University of Lampung, Bandar Lampung, 35145, Indonesia ]
  • Seung-Hwan Lee [ College of Forest and Environmental Sciences, Kangwon National University, Chuncheon 24341, Republic of Korea ]
  • Nam-Hun Kim [ College of Forest and Environmental Sciences, Kangwon National University, Chuncheon 24341, Republic of Korea ] Corresponding Author

참고문헌

자료제공 : 네이버학술정보

간행물 정보

발행기관

  • 발행기관명
    강원대학교 산림과학연구소 [Institute of Forest Science Kangwon National University]
  • 설립연도
    1975
  • 분야
    농수해양>임학
  • 소개
    강원대학교부설산림과학연구소(이하 “연구소”라 한다)는 산림에 관한 제반 학술적 연구를 통하여 산림자원의 효용을 밝히고 임업 및 임산업의 발전에 기여함을 목적으로 한다.

간행물

  • 간행물명
    강원대학교 산림과학연구소 학술대회
  • 간기
    부정기
  • 수록기간
    2017~2024
  • 십진분류
    KDC 526 DDC 634

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