This paper presents the results of textural segmentation of satellite images with spatial resolution <1 m using U-Net convolutional neural networks. To conduct numerical experiments, a panchromatic image of the WorldView-2 test site on the territory of the Bronnitsky Forestry (Moscow region) used. The possibilities of automating the selection of neural network parameters based on genetic algorithms investigated. The proposed method makes it possible to effectively segment the main types of natural and man-made objects, as well as to distinguish structural classes of woodlands
This is the final version. Available from SPIE via the DOI in this recordSemantic segmentation is on...
This article presents research results of a convolution neural network for building detection on hig...
Recent technological advances in remote sensing sensors and platforms, such as high-resolution satel...
This paper presents the results of textural segmentation of satellite images with spatial resolution...
The goal of our research was to develop methods based on convolutional neural networks for automatic...
Факультет радиофизики и компьютерных технологийThis paper discusses the image segmentation methods b...
Convolutional neural networks for detection geo- objects on the satellite images from DSTL, Landsat-...
Satellite images have a very high resolution, which make their automatic processing computationally ...
The paper describes the process of training a convolutional neural network to segment land into its ...
This article presents research results of two convolutional neural networks for building detection o...
The work is devoted to studying the feasibility of applying the convolutional neural networks with d...
The aim of this research is to create a deep learning algorithm for automated forest areas segmentat...
The availability of high-resolution remote sensing (HRRS) data has opened up the possibility for new...
Results of training of convolutional neural network for satellite four-channel image segmentation ar...
Results of training a convolutional neural network for the satellite image segmentation are presente...
This is the final version. Available from SPIE via the DOI in this recordSemantic segmentation is on...
This article presents research results of a convolution neural network for building detection on hig...
Recent technological advances in remote sensing sensors and platforms, such as high-resolution satel...
This paper presents the results of textural segmentation of satellite images with spatial resolution...
The goal of our research was to develop methods based on convolutional neural networks for automatic...
Факультет радиофизики и компьютерных технологийThis paper discusses the image segmentation methods b...
Convolutional neural networks for detection geo- objects on the satellite images from DSTL, Landsat-...
Satellite images have a very high resolution, which make their automatic processing computationally ...
The paper describes the process of training a convolutional neural network to segment land into its ...
This article presents research results of two convolutional neural networks for building detection o...
The work is devoted to studying the feasibility of applying the convolutional neural networks with d...
The aim of this research is to create a deep learning algorithm for automated forest areas segmentat...
The availability of high-resolution remote sensing (HRRS) data has opened up the possibility for new...
Results of training of convolutional neural network for satellite four-channel image segmentation ar...
Results of training a convolutional neural network for the satellite image segmentation are presente...
This is the final version. Available from SPIE via the DOI in this recordSemantic segmentation is on...
This article presents research results of a convolution neural network for building detection on hig...
Recent technological advances in remote sensing sensors and platforms, such as high-resolution satel...