Classification of Tree Species in the Process of Timber-Harvesting Operations Using Machine-Learning Methods
Fedor Svoikin,
Kirill Zhuk,
Vladimir Svoikin,
Sergey Ugryumov,
Ivan Bacherikov,
Daniela Veas Iniesta,
Anatoly Ryapukhin
Affiliations
Fedor Svoikin
Saint Petersburg State Forest Technical University, Institutskiy Lane 5, 194021 Saint Petersburg, Russia
Kirill Zhuk
Saint Petersburg State Forest Technical University, Institutskiy Lane 5, 194021 Saint Petersburg, Russia
Vladimir Svoikin
Syktyvkar Forest Institute (Branch), Saint-Petersburg State Forest Technical University Named after S.M. Kirov, Lenin Street 39, 167982 Syktyvkar, Russia
Sergey Ugryumov
Saint Petersburg State Forest Technical University, Institutskiy Lane 5, 194021 Saint Petersburg, Russia
Ivan Bacherikov
Saint Petersburg State Forest Technical University, Institutskiy Lane 5, 194021 Saint Petersburg, Russia
Daniela Veas Iniesta
Moscow Aviation Institute, Volokolamskoe Highway 4, 125993 Moscow, Russia
Anatoly Ryapukhin
Moscow Aviation Institute, Volokolamskoe Highway 4, 125993 Moscow, Russia
This article presents the constraining factors that limit the increase in the efficiency of logging production by modern multi-operation machines operating on the Scandinavian cut-to-length technology in the felling phase, namely the selection and registration of wood species. The factors for creating a complete architecture of a fully connected neural network (NN) are given. The dependence of the prediction accuracy of a fully connected NN on a test sample on the size of the training dataset, and an image of the dependence of the prediction accuracy on the number of trees in the random forest method for image classification is shown. For a fully connected NN, a sufficient number of images and a test sample size were established for training, using tree-trunk breed-class labels as target values. A selected list of trees was given, with the size of the training sample of images presenting a problem for the classification of tree trunks using the random forest method. The aim was the discovery of the optimal number of trees necessary to achieve prediction accuracy.