Труды сотрудников ИЛ им. В.Н. Сукачева СО РАН

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Найдено документов в текущей БД: 4

    Recognition of forest textures on airphotos
/ M. N. Favorskaya [et al.] // Proceedings of the IASTED International Conference on Automation, Control, and Information Technology - Information and Communication Technology, ACIT-ICT 2010. - 2010. - IASTED International Conference on Automation, Control, and Information Technology - Information and Communication Technology, ACIT-ICT 2010 (15 June 2010 through 18 June 2010, Novosibirsk) Conference code: 89100. - P9-14 . -
Аннотация: Recognition of forest and its state on airphotos is one of important problems of natural resources monitoring. Automatic interpretation of forest textures photos is also a complex task which isn't finally solved. In this paper we propose new method of forest textures recognition based on two-level procedure: (1) the pre-segmentation of airphoto based on image pyramid and definition of statistical similarity regions, and (2) the texture recognition using neural network of direct propagation with input complex fractal and statistical descriptors and the post-segmentation of airphoto. Application of additional methods of laser scanning permits to recognize trees using not only upper crowns but also their lateral surfaces. Thereby we can estimate morphological descriptors of leaves mass of trees analyzing the set of airphotos.

Scopus

Держатели документа:
Siberian State Aerospace University, pr. Krasnoyarsky rabochiy, 31, Krasnoyarsk, 660014, Russian Federation
Institute of Forest SB RAS, Akademgorodok, 50/28, Krasnoyarsk, 660036, Russian Federation

Доп.точки доступа:
Favorskaya, M.N.; Petukhov, N.Y.; Danilin, I.M.; Danilin, A.I.

    Multi-agent automation system for monitoring, forecasting and managing emergency situations
/ O. A. Antamoshkin, O. A. Antamoshkina, N. A. Smirnov // IOP Conference Series: Materials Science and Engineering. - 2016. - Vol. 122: 19th International Scientific Conference Reshetnev Readings 2015 (10 November 2015 through 14 November 2015, ) Conference code: 122153, Is. 1, DOI 10.1088/1757-899X/122/1/012003 . -

Кл.слова (ненормированные):
Automation -- Multi agent systems -- Automation systems -- Emergency situation -- Models and algorithms -- Multi agent -- Multi-agent approach -- Monitoring

Аннотация: The paper outlines the general concept of multi-agent approach to develop the automation system for monitoring, forecasting and managing emergency situations and its models and algorithms included. © Published under licence by IOP Publishing Ltd.

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Держатели документа:
Siberian State Aerospace University, Academician M. F. Reshetnev, Krasnoyarsk, Russian Federation
Siberian Federal University, Krasnoyarsk, Russian Federation
V.N. Sukachev Institute of Forest, SB, RAS, Krasnoyarsk, Russian Federation

Доп.точки доступа:
Antamoshkin, O. A.; Antamoshkina, O. A.; Smirnov, N. A.

    AutoCellRow (ACR) – A new tool for the automatic quantification of cell radial files in conifer images
/ P. Dyachuk, A. Arzac, P. Peresunko [et al.] // Dendrochronologia. - 2020. - Vol. 60. - Ст. 125687, DOI 10.1016/j.dendro.2020.125687 . - ISSN 1125-7865
Аннотация: Quantitative wood anatomy (QWA) is a growing field of dendrochronology that allows obtaining a large number of parameters as the number, size and spatial arrangement of cellular elements, elements that highlight the adjustments of trees to their environment. In this work, we presented the free/libre open-source software AutoCellRow (ACR), a ready-to-use tool for automatic QWA in conifers. The ACR analyzes radial files of cells on cross-sections views of tree rings and provides automatic measurements of different cell parameters (e.g., lumen radial diameter, double cell wall thickness and cell radial diameter) for each cell along the selected radial file. The ACR measurements are based on high performed image analysis of xylem cells. The accuracy of the software measurements was tested in cross-sections of five conifer species from a semi-arid area of southern Siberia, and compared with measurements obtained by a semiautomatic tool. Our results suggested high accuracy in the ACR cell traits measurements, facilitating and speeding the analysis of quantitative wood anatomy in conifers over radial files of cells. © 2020 Elsevier GmbH

Scopus

Держатели документа:
Siberian Federal University, 79 Svobodny pr, Krasnoyarsk, 660041, Russian Federation
V. N. Sukachev Institute of Forest, Siberian Branch of the Russian Academy of Sciences, Krasnoyarsk, Russian Federation
Khakass Technical Institute, Siberian Federal University, 27 Shchetinkina St, Abakan, 655017, Russian Federation
Le Studium Loire Valley Institute for Advanced Studies, Orleans, France

Доп.точки доступа:
Dyachuk, P.; Arzac, A.; Peresunko, P.; Videnin, S.; Ilyin, V.; Assaulianov, R.; Babushkina, E. A.; Zhirnova, D.; Belokopytova, L.; Vaganov, E. A.; Shishov, V. V.

    Mathematical Method of Allocating Quotas of the Harmful Emission between Its Sources in a Megacity
/ L. S. Maergoiz // J. Appl. Ind. Math. - 2021. - Vol. 15, Is. 2. - P302-306, DOI 10.1134/S1990478921020113 . - ISSN 1990-4789
Аннотация: Abstract: In connection with the topical problem of creating comfortable atmosphere in urbanenvironment, we present a mathematical algorithm for allocating quotas of harmful emissionsbetween its sources in a megacity. Our construction is based on some recently developed methodof optimal distribution of limited resources between differentiated groups of people. © 2021, Pleiades Publishing, Ltd.

Scopus

Держатели документа:
Federal Research Center “Krasnoyarsk Scientific Center of the Siberian Branch of theRussian Academy of Sciences,” Sukachev Institute of Forest, Krasnoyarsk, 660036, Russian Federation

Доп.точки доступа:
Maergoiz, L. S.