Magistrlik dissertatsiyasi 7 bet, 59 ta rasm, ta jadval, 70 ta adabiyot va ilovadan iborat
FOYDALANILGAN ADABIYOTLAR RO‘YXATI
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FOYDALANILGAN ADABIYOTLAR RO‘YXATIMohamed Aly, Real time Detection of Lane Markers in Urban Streets, IEEE Intelligent Vehicles Symposium, Eindhoven, The Netherlands, June 2008 Sergey Sudakov, Aleksandr Semashko, Olga Barinova, Anton Konushin, Vladislav Kinshakov, Andrey Krыlov, Algoritmы detektirovaniya razmetki i defektov dorojnogo pokrыtiya, Moskovskiy Gosudarstvennыy Universitet. Prototip Lane Departure Warning ili kak napomnit voditelyu o tom, chto jit yemu ostalos ne ochen dolgo// Dmitriy Konobriskiy, URL: https://habrahabr.ru/post/136294/ “Detection of Lane Marking based on Ridgeness and RANSAC” In Proc. of the 8th International IEEE Conference on Intelligent Transportation Systems// A.Lopez, C.Canero, J.Serrat, J.Saludes, F.Lumbreras, T.Graf , pp.254- 259, 2005 “An Integrated, Robust Approach to Lane Marking Detection and Lane Tracking” In Proc. IEEE Intelligent Vehicles Symposium// Joel C. McCall and Mohan M. 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C Burges // Data Mining and Knowledge Discovery. –1998, –№ 2. –P.121–167. Hastie, T., Tibshirani R., Friedman J. Chapter 15 Random Forests / T. Hastie, R. Tibshirani, J. Friedman // The Elements of Statistical Learning: Data Mining, Inference, and Prediction. —2009. –№2.–P. 746. Freund, Y. A Short Introduction to Boosting / Y. Freund, R. E. Schapire // Journal of Japanese Society for Artificial Intelligence. –1999. –№5.–P. 771-780. Minsky, M. Perceptrons: An Introduction to Computational Geometry / M.Minsky and S.Papert – Cambridge: MiT Press, 1972. –214p. Eichner, M. Integrated speed limit detection and recognition from real-time video /M. Eichner, T. Breckon // IEEE International Intelligent Vehicles Symposium. –2009, –№8, –P.626-631 ColorConversion:http://www.equasys.de/colorconversion.html Hum, Y. C. Multiobjectivesbihistogram equalization for image contrast enhancement / Y. C. Hum, K. W. Lai, M. Salim, I. Maheza// Complexity. – 2014. –№20. –P. 22-36. Gonzalez, R. Digital Image Processing 3rd edition / R. Gonzalez, R. Woods.–Prentice Hall, –2008. Canny, J. A Computational Approach to Edge Detection / J. Canny // IEEE Transactions on Pattern Analysis and Machine Intelligence. – 1986. – №6. –P. 679-698. Suzuki, S. Topological structural analysis of digital binary images by border following / S. Suzuki, K. Abe // Computer Vision, Graphics, and Image Processing. –1985. –№5. –P. 32-46. A Discrete Green's Theorem:http://demonstrations.wolfram.com Kaehler, A. Learning OpenCV 3, Computer Vision in C++ with the OpenCV Library. / A. Kaehler, G. Bradski – O'Reilly Media, 2015 Download 118.18 Kb. Do'stlaringiz bilan baham: |
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