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Recognition of characteristic objects on the ground using the SURF method

Authors: Pimenova M.B.
Published in issue: #10(39)/2019
DOI: 10.18698/2541-8009-2019-10-540


Category: Informatics, Computer Engineering and Control | Chapter: System Analysis, Control, and Information Processing, Statistics

Keywords: SURF method, image processing, image recognition, key points, feature point descriptors, camera calibration, machine vision
Published: 18.10.2019

One of the most resistant to projective distortion methods — Speeded Up Robust Features (SURF), which consists in finding specific points of the image. Due to its invariance to shooting conditions and projective transformations, the SURF algorithm can be used to search for objects in real time, solve a navigation problem, and determine the current fragment of the underlying surface in order to obtain the coordinates of the aircraft. The process of recognizing a given fragment on a survey in real time is described. Various image pre-processing algorithms are considered to improve the efficiency of pattern recognition. A study was made of the recognition capabilities in conditions of different illumination, during deformation by scaling and rotation, when changing the level of brightness and blur of the image, as well as the point of view.


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