Formation of a generalized semantic network of concepts
Main Article Content
Abstract
The subject of research is the features of formation of a generalized semantic network of concepts. The purpose of article is to substantiate the composition and main types of nodes and relationships characteristic of the semantic network of concepts, as well as the formation of a generalized semantic network of concepts for structural and linguistic recognition of images in computer systems and networks. Research methods: methods of the theory of mathematical logic, mathematical linguistics and set theory; methods of information visualization using graphs. Results: an approach to the formation of a generalized semantic network of structural and linguistic concepts of contour images of objects obtained at different shooting angles is proposed; the substantiation of the composition and types of nodes and relations, characteristic of the semantic network of concepts, has been carried out; the basic principles of constructing a semantic network of structural and linguistic concepts of recognition objects are formulated. Conclusions: To construct an image description that corresponds to the concept of semantic information processing and can be used in systems for collecting relevant images in computer systems and networks, it is advisable to use a structural-linguistic approach to recognition using a generalized semantic network of concepts. The use of this network in the classification and identification of objects can significantly expand the range of images accepted for consideration, taking into account different directions of shooting and different angles of camera deviation from nadir position.
Article Details
References
Simankov, V.S. and Tolkachev, D.M. (2017), Methods and algorithms for finding information on the Internet, Bib-lio-Globus, Moskva, 332 p., DOI: https://doi.org/10.18334/9785950050183.
Papulin, S.Yu. (2011), “Poisk elektronnykh izobrazheniy po semanticheskim priznakam [Search for electronic images by semantic features]”. Programmnyye produkty i sistemy, NII “Tsentrprogrammsistem”, Tver, No. 1, P. 16-20.
Gonsales, R. and Vuds, R. (2012), Digital image processing, Tekhnosfera, Moskow, 1104 p.
Chaban, L.N. (2016), Methods and algorithms for pattern recognition in automated decryption of remote sensing data, MIIGAiK, Moskow, 94 p.
Onishchenko, V.V. (2010), “A manner for collecting relevant images using the method of structural-linguistic classifi-cation and identification”. Systemy ozbrojennja i vijsjkova tekhnika, KhUPS, Kharkiv, No. 3(23), P. 129-132.
Onishchenko, V.V. (2010), “Mathematical model of the process of semantic transformation of the contour image into the structure of the concept”. Nauka i tekhnika Povitrjanykh Syl Zbrojnykh Syl Ukrajiny, KhUPS, Kharkiv, No. 2(4), P. 146-149.
Parzhin, Yu.V., Grinev, D.V. and Onishchenko, V.V. (2006), “Dekompozitsiya struktur konturnykh izobrazheniy s proyektivnymi iskazheniyami [Decomposition of structures of contour images with projective distortions]”. Systemy obrobky informaciji, Kharkivsjkyj universytet Povitrjanykh Syl, Kharkiv, Vyp. 3(52), P. 119-122.
Celik, C. and Bilge, H.S. (2017), “Content based image retrieval with sparse representations and local feature de-scriptors: a comparative study”, Pattern Recognition, vol. 68, pp. 1-13.
Ibtihaal M. Hameed, Sadiq H. Abdulhussain and Basheera M. Mahmmod (2021) Content-based image retrieval: A re-view of recent trends, Cogent Engineering, vol. 8:1, DOI: https://doi.org/10.1080/23311916.2021.1927469.
Lalit Kumar Tyagi, Rama Kant and Anish Gupta (2021), “A Comparative Analysis of Various Local Feature De-scriptors in Content-Based Image Retrieval System”, Conf. Series, vol. 1854, 012043. pp. 9, DOI: https://doi.org/10.1088/1742-6596/1854/1/ 012043.
Latif Afshan, Aqsa Rasheed, Umer Sajid, Jameel Ahmed, Nouman Ali, Naeem Iqbal Ratyal, Bushra Zafar, Saadat Hanif Dar, Muhammad Sajid and Tehmina Khalil. (2019), “Content-Based Image Retrieval and Feature Extraction: A Com-prehensive Review”, Hindawi. Mathematical Problems in Engineering, Vol. 2019, 9658350, pp. 21, DOI: https://doi.org/ 10.1155/2019/9658350.
Dannina Kishore and Chanamallu Srinivasa Rao (2021), “Content-Based Image Retrieval System Based on Fusion of Wavelet Transform, Texture and Shape Features”, Mathematical Modelling of Engineering Problems, vol. 8, No. 1, February, 2021, pp. 110-116, DOI: https://doi.org/10.18280/mmep.080114.
Nicole Tham Ley, Mai, Syahmi Syahiran Bin Ahmad, Ridzuan and Zaid Bin, Omar (2018), “Content-based Image Re-trieval System for an Image Gallery Search Application”, International Journal of Electrical and Computer Engineer-ing (IJECE) Vol. 8, No. 3, June 2018, pp. 1903-1912, DOI: https://doi.org/10.11591/ijece.v8i3.pp1903-1912.
Al-Mohamade, A., Bchir, O. and Ben Ismail, M.M. (2020), “Multiple Query Content-Based Image Retrieval Using Rele-vance Feature Weight Learning”, J. Imaging 2020, 6, 2, DOI: https://doi.org/10.3390/jimaging6010002.
Vipin, Tyagi (2017), Content-Based Image Retrieval – Ideas, Influences, and Current Trends. Springer, 378 p.
Rassel, S. and Norvig, P. (2006), Artificial Intelligence: A Modern Approach, Viliams, Moskow, 1408 p.
Ustalov, D. (2017), “Semantic networks and natural language processing”. Otkrytyye sistemy. SUBD. No 02, available at: https://www.osp.ru/os/2017/02/13052229.
Onyshhenko, V.V. (2006), “Verification technique for contour images”, Systemy ozbrojennja i vijsjkova tekhnika, Kharkivsjkyj universytet Povitrjanykh Syl imeni Ivana Kozheduba, Kharkiv, No. 3(7), pp. 80-83.
Parzhin, Yu.V., Grinev, D.V. and Onishchenko, V.V. (2006), “Determination of the axis of normalization in conceptu-al structures of contour images with projective distortions”, Systemy obrobky informaciji, No. 9(58), pp. 109-112.
Parzhin, Yu.V., Grinev, D.V. and Onishchenko, V.V. (2007), “Normalization of image contours for recognition of three-dimensional objects by means of remote sensing of the Earth in real time”, Problemy upravlinnja jedynoju derzhavnoju systemoju cyviljnogho zakhystu, MNSU, UCZU, Kharkiv, pp. 117-119.
Gavrilova, T.A. and Khoroshevskiy, V.F. (2000), Knowledge bases of intelligent systems, Piter, Sankt-Peterburg, 384 p.