High-efficient search and analysis of road lanes
DOI:
https://doi.org/10.15587/2313-8416.2015.54082Keywords:
low-level image processing, pattern identification, algorithm for computer vision, road lanesAbstract
It is developed and implemented high-efficient algorithm for searching and processing elements of road lanes. There are described the most common steps in algorithm logic. The test program, which was written specially for this algorithm, has shown high detection quality. Such program can be used for driver assistance systems
References
Piso, A. (1994) Terminology in Logistics. ANNEX Dictionary. European Logistics Association, 34, 95–101.
Konushin, A., Kinshakov, V., Krylov, A. (2009) Algoritmy detektirovanija razmetki i defektov dorozhnogo pokrytija. Izd-vo MGU, 28 (12), 18–36.
Zhuravlev, Ju. (1989). Raspoznavanie. Klassifikacija. Prognoz. Matematicheskie metody i ih primenenie, Issue 2. Moscow: Nauka, 70–72.
Chen, C. (1993). H. Handbook of Pattern Recognition and Computer Vision. Word Scientific Publishing Company, 17, 84–91.
Sonka, M. (1999). Image processing, analysis and machine vision. Cole Publishing Company, 12, 67–70.
Han, J., Kamber, M. (2006). Data Mining: Concepts and Techniques. San Francisco: Morgan Kaufmann Publishers, 743.
Downloads
Published
Issue
Section
License
Copyright (c) 2015 Дмитрий Александрович Морозов
This work is licensed under a Creative Commons Attribution 4.0 International License.
Our journal abides by the Creative Commons CC BY copyright rights and permissions for open access journals.
Authors, who are published in this journal, agree to the following conditions:
1. The authors reserve the right to authorship of the work and pass the first publication right of this work to the journal under the terms of a Creative Commons CC BY, which allows others to freely distribute the published research with the obligatory reference to the authors of the original work and the first publication of the work in this journal.
2. The authors have the right to conclude separate supplement agreements that relate to non-exclusive work distribution in the form in which it has been published by the journal (for example, to upload the work to the online storage of the journal or publish it as part of a monograph), provided that the reference to the first publication of the work in this journal is included.