Anatomical traits of Cryptomeria japonica tree rings studied by wavelet convolutional neural network

INAFOR EXPO 2019 - International Conference on Forest Products (ICFP) 2019: Adopting the Renewable Bioenergy and Waste Utilization to Support Circular Economy and Sustainable Environment 28 August 2019, Bogor, West Java, Indonesia

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