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Wood species identification based on an ensemble of deep convolution neural networks

Authors

  • Tao He

    Zhejiang A&F University, China

  • Shibiao Mu

    Yiwu Industrial & Commercial College, China

  • Houkui Zhou

    Zhejiang A&F University, China

  • Junguo Hu

    Zhejiang A&F University, China

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Posted in WOOD RESEARCH Volume 66, Number 1, 2021Tagged deep convolution neural networks, ensemble framework, macroscopic images, wood identification

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Cite This Article

HE, T., MU, S., ZHOU, H. & HU, J. (2021): Wood species identification based on an ensemble of deep convolution neural network. In: Wood Research 66 (1), 1-14 pp., available at: doi.org/10.37763/wr.1336-4561/66.1.0114

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