Masofadan zondlash asosida olingan tasvirlarda deskriptorlarni qurish usullarining qiyosiy tahlili
Основное содержимое статьи
Аннотация
Tasvirlarni taqqoslash, tasvirlarda obyektlarni qidirish, tasvirni roʻyxatdan oʻtkazish amaliy masalalari yechishda belgilar toʻplami tashkil etadigan deskriptorlardan foydalaniladi. Ushbu maqolada deskriptorlar qurish usullarining gradiyentga asoslangan deskriptorlar, spektral taqdim etishga asoslangan deskriptorlar, lokal binar deskriptorlar, shakl deskriptorlari, bazis funksiyasiga asoslangan deskriptorlar sinfi tegishli usullar tasvirlar uchun oʻrganilgan. Masofadan olingan tasvirlarning turli vaqtlarda olishi, turli qurilmalarda olinishi, deformatsiyalar paydo boʻlishi, okklyuziyalar boʻlishi hisobga olinib deskriptorlarni qurish usullari burilishga invariant, tasvir kontrast, intensivligini oʻzgarishi, masshtab, deformatsiya okklyuziyaga turgʻunligi tahlil etildi. Qiyosiy tahlillar asosida xulosa qismida keyingi ilmiy tadqiqot ishlari uchun tavsiyalar berildi. Deskriptorlar koʻplab masofadan olingan tasvirlarni roʻyxatga olish, tasvirni birlashtirish, tasvir boʻyicha qidirish, tasvirlarda obyektni tanib olish va oʻzgarishlarni aniqlash masalalarida muhim ekanligi qayd etildi.
Информация о статье

Это произведение доступно по лицензии Creative Commons «Attribution» («Атрибуция») 4.0 Всемирная.
Библиографические ссылки
Radjabov S.S., Yusupov O.R., Eshonqulov E.Sh. Masofadan zondlash asosida olingan tasvirlarga ishlov berish masalalari. Mezhdunarodnaya nauchno-prakticheskaya konferentsiya «Aktual'nyye zadachi matematicheskogo modeli-rovaniya i informatsionnykh tekhnologiy». – Nukus, Nukusskiy filial TUIT imeni Mukhammada al'-Khorazmiy, 2023 g. Tom №3 – 69-71 s.
Yusupov O.R., Eshonkulov E.Sh., Abdiyeva Kh.S. An enhancement of the slic superpixel segmentation method for hyperspectral images. Actual problems of applied mathematics and information technologies-Al-Khwarizmi 2023. 291-292 pp.
Yusupov O. R., Eshonkulov E. Sh. Superpixel segmentation approaches for remote sensing images. Actual problems of applied mathematics and information technologies Al-Khwarizmi 2023. 292-293 pp.
C. Leng, H. Zhang, B. Li, G. Cai, Z. Pei and L. He, "Local Feature Descriptor for Image Matching: A Survey," in IEEE Access, vol. 7, pp. 6424-6434, 2019, doi: 10.1109/ACCESS.2018.2888856.
B. Zitová and J. Flusser, ‘‘Image registration methods: A survey,’’ Image Vis. Comput., vol. 21, no. 11, pp. 977–1000, 2003.
W. K. Pratt, ‘‘Correlation techniques of image registration,’’ IEEE Trans. Aerosp. Electron. Syst., vol. AES-10, no. 3, pp. 353–358, May 1974.
P. Viola and W. M. Wells, III, ‘‘Alignment by maximization of mutual information,’’ Int. J. Comput. Vis., vol. 24, no. 2, pp. 137–154, Sep. 1997.
X. Liu, Z. Tian, and M. T. Ding, ‘‘A novel adaptive weights proximity matrix for image registration based on R-SIFT,’’ AEU-Int. J. Electron. Commun., vol. 65, no. 12, pp. 1040–1049, 2011.
C. Leng, J. Xiao, M. Li, and H. P. Zhang, ‘‘Robust adaptive principal component analysis based on intergraph matrix for medical image registration,’’ Comput. Intell. Neurosci., vol. 2015, Mar. 2015, Art. no. 829528.
L. G. Brown, ‘‘A survey of image regis-tration techniques,’’ ACM Comput.Surv., vol. 24, no. 4, pp. 325–376, Dec. 1992.
Krig, S. Computer vision metrics: Survey, taxonomy, and analysis / S. Krig. – Berkeley, CA: Apress Media, 2014. – 498 p. – ISBN: 978-1-4302-5929-9.
Jain, M. A survey on CBIR on the basis of different feature descriptor / M. Jain, D. Singh // British Journal of Mathematics & Computer Science. – 2016. – Vol. 14, Issue 6. – P. 1-13. – DOI: 10.9734/BJMCS/2016/24000.
Ojala, T. A comparative study of texture measures with classification based on feature distributions / T. Ojala, M. Pietikäinen, D. Hardwood // Pattern Recognition. – 1996. – Vol. 29, Issue 1. – P. 51-59. – DOI: 10.1016/0031- 3203(95)00067-4.
Calonder, M. BRIEF-binary robust independent elementary features / M. Calonder, V. Lepetit, C. Strecha, P. Fua // European Conference on Computer Vision. – 2010. – Part IV. – P. 778-792. – DOI: 10.1007/978-3-642-15561-1_56.
Rublee, E. ORB: An efficient alternative to SIFT or SURF / E. Rublee, V. Rabaud, K. Konolige, G. Bradski // IEEE International Conference on Computer Vision (ICCV). – 2011. – P. 2564-2571. – DOI: 10.1109/ICCV.2011.6126544.
Leutenegger, S. BRISK: Binary Robust invariant scalable keypoints / S. Leutenegger, M. Chli, R. Siegwart // IEEE International Conference on Computer Vision (ICCVʼ11). – 2011. – P. 2548-2555. – DOI: 10.1109/ICCV.2011. 6126542.
Lowe, D.G. Distinctive image features from scale-invariant keypoints / D.G. Lowe // International Journal of Computer Vision. – 2004. – Vol. 60, Issue 2. – P. 91-110. – DOI: 10.1023/B:VISI.0000029664.99615.94.
Bay, H. SURF: Speeded up robust features / H. Bay, A. Ess, T. Tuytelaars, L. Van Gool // Computer Vision and Image Understanding. – 2008. – Vol. 110, Issue 3. – P. 346-359. – DOI: 10.1016/j.cviu.2007.09.014.
Tola, E. DAISY: An efficient dense descriptor applied to wide-baseline stereo / E. Tola, V. Lepetit, P. Fua // IEEE Transactions on Pattern Analysis and Machine Intelligence. – 2010. – Vol. 32, Issue 5. – P. 815-830. – DOI: 1109/TPAMI.2009.77. 10.
Dalal, N. Histograms of oriented gradients for human detection / N. Dalal, B. Triggs // IEEE Computer Society Conference on Computer Vision and Pattern Recognition (CVPR 2005). – 2005. – Vol. 1. – P. 886-893. – DOI: 10.1109/CVPR.2005.177.
Scharstein, D. A taxonomy and evaluation of dense twoframe stereo correspondence algorithms / D. Scharstein, R. Szeliski // International Journal of Computer Vision. – 2002. – Vol. 47, Issue 1-3. – P. 7-42. – DOI: 10.1023/A:1014573219977.
Jun, B. Robust face detection using local gradient patterns and evidence accumulation / B. Jun, D. Kim // Pattern Recognition. – 2012. – Vol. 45, Issue 9. – P. 3304-3316. – DOI: 10.1016/j.patcog. 2012.02.031.
Freeman, H. On the encoding of arbitrary geometric configurations / H. Freeman // IRE Transactions on Electronic Computers. – 1961. – Vol. EC-10, Issue 2. – P. 260-268. – DOI: 10.1109/TEC. 1961.5219197.
Gonzalez, R. Digital image processing / R. Gonzalez, R. Woods. – 3rd ed. – Upper Saddle River, NJ: PrenticeHall, 2007. – 976 p. – ISBN: 978-0-13-168728-8.
Bracewell, R. The Fourier transform and its applications / R. Bracewell. – 3rd ed. – New York: McGraw-Hill Science, 1999. – 640 p. – ISBN: 978-0-07-303938-1.
Fei-Fei, L. Recognizing and learning object categories / L. Fei-Fei, R. Fergus, A. Torralba // Conference on Computer Vision and Pattern Recognition. – 2007.
Sidyakin, S.V. Morfologicheskiye deskriptory formy binarnykh izobrazheniy na osnove ellipticheskikh strukturiruyushchikh elementov / S.V. Sidyakin, YU.V. Vizil'ter // Komp'yuternaya optika. – 2014. – T. 38, № 3. – S. 511-520. – DOI: 10.18287/ 0134-2452-2014-38-3-511-520.
Alahi, A. Freak: Fast retina keypoint / A. Alahi, R. Ortiz, P. Vandergheynst // Computer Vision and Pattern Recognition (CVPR). – 2012. – P. 510-517. – DOI: 10.1109/CVPR.2012. 6247715.
Alcantarilla, P. Fast explicit diffusion for accelerated features in nonlinear scale spaces / P. Alcantarilla, J. Nuevo, A. Bartoli // British Machine Vision Conference. – 2013. – P. 13.1-13.11. – DOI: 10.5244/C.27.13.
Demchev, D.M. Vosstanovleniye poley dreyfa morskogo l'da po posledova-tel'nym sputnikovym radiolo-katsionnym izobrazheniyam metodom proslezhivaniya osobykh tochek / D.M. Demchev, V.A. Volkov, V.S. Khmeleva, E.E. Kazakov // Problemy Arktiki i Antarktiki. – 2016. – № 3(109). – C. 5-19.