Кл.слова (ненормированные):
Fractal -- Neural networks -- Remote sensing -- Statistic descriptors -- Texture -- Airphoto -- Complex task -- Image pyramids -- Laser scanning -- Lateral surface -- Morphological descriptors -- Pre-segmentation -- Statistical descriptors -- Texture recognition -- Communication -- Forestry -- Fractals -- Image segmentation -- Image texture -- Neural networks -- Remote sensing -- Textures -- Information technology -- Communication -- Forestry -- Image Analysis -- Neural Networks -- Remote Sensing -- Texture
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.