Performance Influencing Factors of Convolutional Neural Network Models for Classifying Certain Softwood Species

Author:

Kim Jong-Ho1ORCID,Purusatama Byantara Darsan2ORCID,Savero Alvin Muhammad1ORCID,Prasetia Denni1ORCID,Yang Go-Un1,Han Song-Yi2ORCID,Lee Seung-Hwan12ORCID,Kim Nam-Hun1

Affiliation:

1. Department of Forest Biomaterials Engineering, College of Forest and Environmental Sciences, Kangwon National University, Chuncheon 24341, Republic of Korea

2. Institute of Forest Science, Kangwon National University, Chuncheon 24341, Republic of Korea

Abstract

This study aims to verify the wood classification performance of convolutional neural networks (CNNs), such as VGG16, ResNet50, GoogLeNet, and basic CNN architectures, and to investigate the factors affecting classification performance. A dataset from 10 softwood species consisted of 200 cross-sectional micrographs each from the total part, earlywood, and latewood of each species. We used 80% and 20% of each dataset for training and testing, respectively. To improve the performance of the architectures, the dataset was augmented, and the differences in classification performance before and after augmentation were compared. The four architectures showed a high classification accuracy of over 90% between species, and the accuracy increased with increasing epochs. However, the starting points of the accuracy, loss, and training speed increments differed according to the architecture. The latewood dataset showed the highest accuracy. The epochs and augmented datasets also positively affected accuracy, whereas the total part and non-augmented datasets had a negative effect on accuracy. Additionally, the augmented dataset tended to derive stable results and reached a convergence point earlier. In the present study, an augmented latewood dataset was the most important factor affecting classification performance and should be used for training CNNs.

Funder

Ministry of Science and ICT

Ministry of Education

Korea Forest Service

Publisher

MDPI AG

Subject

Forestry

Reference35 articles.

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5. Deep Learning Massively Accelerates Super-Resolution Localization Microscopy;Ouyang;Nat. Biotechnol.,2018

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