INTELLIGENT SPACE SYSTEM FOR MONITORING BUILDINGS AND STRUCTURES Russian patent published in 2019 - IPC G06N3/02 G06T5/50 

Abstract RU 2707138 C1

FIELD: monitoring systems.

SUBSTANCE: invention relates to intelligent space monitoring system. System includes a set of computer devices structured on the basis of a convolutional neural network, associated with Earth remote sensing spacecrafts and providing the resulting images, generated based on images received from Earth remote sensing spacecraft, and Earth remote sensing data, wherein computer means structured on the basis of the convolutional neural network are connected to Earth remote probing apparatus of Resource-P type, convolution neural network processes images of building objects, received from spacecraft of remote sensing of the Earth of the specified type, with formation by means of a sliding window method of rectangular matrixes of pixels of an image with a given pitch – crops, generating a plurality of mappings for each rectangular matrix by rotating and mirroring each of the display segments by means of a convolutional neural network and classifying it using the convolutional neural network as one of the building objects.

EFFECT: remote probing of the Earth for monitoring buildings and structures.

1 cl, 3 dwg

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RU 2 707 138 C1

Authors

Ostrovskaya Anna Aleksandrovna

Nikolskij Dmitrij Borisovich

Dates

2019-11-22Published

2018-12-21Filed