Pattern Recognition and Image Analysis

, Volume 26, Issue 3, pp 593–596 | Cite as

New algorithms for verifying the consistency between satellite images and survey conditions

  • A. V. Kuznetsov
  • V. V. Myasnikov
Applied Problems


This paper is concerned with the problem of verifying the consistency of the Earth remote sensing data, including digital optical images and survey parameters metadata. The solution of the problem is based on analysis of specific numerical characteristics of the image that depend directly on the survey parameters, such as position of the Sun, position of the spacecraft, and orientation of the recorder. This paper presents two fully automatic calculation procedures (algorithms) of performing such analysis and making a decision about mutual consistency or inconsistency of the data.


satellite image vector map model-oriented descriptor amplitude-phase mismatch Canny edge detector edge tracing 


Unable to display preview. Download preview PDF.

Unable to display preview. Download preview PDF.


  1. 1.
    N. I. Glumov and A. V. Kuznetsov, “The way to find local artificial changes in images,” Avtometriya, No. 47 (3), 4–12 (2011).Google Scholar
  2. 2.
    N. I. Glumov and A. V. Kuznetsov, “Doublets detecting in images,” Komp’yut. Opt., No. 35 (4), 508–512 (2011).Google Scholar
  3. 3.
    N. I. Glumov, A. V. Kuznetsov, and V. V. Myasnikov, “Doublets search in digital images,” Komp’yut. Opt., No. 37 (3), 360–367 (2013).Google Scholar
  4. 4.
    A. V. Kuznetsov and V. V. Myasnikov, “Algorithm for doublets detecting at digital images by using efficient linear local signs,” Komp’yut. Opt., No. 37 (4), 489–495 (2013).Google Scholar
  5. 5.
    H. Farid, “Image forgery detection,” IEEE Signal Processing Mag. 26 (2), 16–25 (2009).CrossRefGoogle Scholar
  6. 6.
    V. V. Myasnikov, “A method for detecting vehicles in digital aerophoto-and space images obtained by distant Earth probing,” Komp’yut. Opt., No. 6 (3), 429–438 (2012).Google Scholar
  7. 7.
    V. V. Myasnikov, “Model-oriented descriptor for gradient field as a convenient tool for digital image recognition and analysis,” Komp’yut. Opt., No. 36 (4), 596–604 (2012).MathSciNetGoogle Scholar
  8. 8.
    M. V. Gashnikov, N. I. Glumov, N. Yu. Il’yasova, V. V. Myasnikov, et al., Computer Image Processing Methods, Ed. by V. A. Soifer (Fizmatlit, Moscow, 2003) [in Russian].Google Scholar
  9. 9.
    J. Canny, “A computational approach to edge detection,” IEEE Trans. PAMI Pattern Anal. Mach. Intellig. 8 (6), 679–698 (1986).CrossRefGoogle Scholar
  10. 10.
    M. Ren, J. Yang, and H. Sun, “Tracing boundary contours in a binary image,” Image Vision Comput. 20 (2), 125–131 (2002).CrossRefGoogle Scholar

Copyright information

© Pleiades Publishing, Ltd. 2016

Authors and Affiliations

  1. 1.Samara National Research UniversitySamaraRussia

Personalised recommendations