Trainable Regularization in Dense Image Matching Problems

This study examines the development of specialized models designed to solve image-matching problems. The purpose of this research is to develop a technique based on energy tensor aggregation for dense image matching. This task is relevant within the framework of computer systems since image comparis...

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Main Authors: Vladimir Zh. Kuklin, Aslan A. Tatarkanov, Alexander A. Umyskov
Format: Article
Language:English
Published: Ital Publication 2023-09-01
Series:HighTech and Innovation Journal
Subjects:
Online Access:https://hightechjournal.org/index.php/HIJ/article/view/437
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author Vladimir Zh. Kuklin
Aslan A. Tatarkanov
Alexander A. Umyskov
author_facet Vladimir Zh. Kuklin
Aslan A. Tatarkanov
Alexander A. Umyskov
author_sort Vladimir Zh. Kuklin
collection DOAJ
description This study examines the development of specialized models designed to solve image-matching problems. The purpose of this research is to develop a technique based on energy tensor aggregation for dense image matching. This task is relevant within the framework of computer systems since image comparison makes it possible to solve current problems such as reconstructing a three-dimensional model of an object, creating a panorama scene, ensuring object recognition, etc. This paper examines in detail the key features of the image matching process based on the use of binocular stereo reconstruction and the features of calculating energies during this process, and establishes the main parts of the proposed method in the form of diagrams and formulas. This research develops a machine learning model that provides solutions to image matching problems for real data using parallel programming tools. A detailed description of the architecture of the convolutional recurrent neural network that underlies this method is given. Appropriate computational experiments were conducted to compare the results obtained with the methods proposed in the scientific literature. The method discussed in this article is characterized by better efficiency, both in terms of the speed of work execution and the number of possible errors.   Doi: 10.28991/HIJ-2023-04-03-011 Full Text: PDF
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spelling doaj.art-561e083b54d649f1930685a8276db3492023-12-26T09:29:16ZengItal PublicationHighTech and Innovation Journal2723-95352023-09-014361762910.28991/HIJ-2023-04-03-011143Trainable Regularization in Dense Image Matching ProblemsVladimir Zh. Kuklin0Aslan A. Tatarkanov1Alexander A. Umyskov2Institute of Design and Technology Informatics of RAS,Institute of Design and Technology Informatics of RAS,Institute of Design and Technology Informatics of RAS,This study examines the development of specialized models designed to solve image-matching problems. The purpose of this research is to develop a technique based on energy tensor aggregation for dense image matching. This task is relevant within the framework of computer systems since image comparison makes it possible to solve current problems such as reconstructing a three-dimensional model of an object, creating a panorama scene, ensuring object recognition, etc. This paper examines in detail the key features of the image matching process based on the use of binocular stereo reconstruction and the features of calculating energies during this process, and establishes the main parts of the proposed method in the form of diagrams and formulas. This research develops a machine learning model that provides solutions to image matching problems for real data using parallel programming tools. A detailed description of the architecture of the convolutional recurrent neural network that underlies this method is given. Appropriate computational experiments were conducted to compare the results obtained with the methods proposed in the scientific literature. The method discussed in this article is characterized by better efficiency, both in terms of the speed of work execution and the number of possible errors.   Doi: 10.28991/HIJ-2023-04-03-011 Full Text: PDFhttps://hightechjournal.org/index.php/HIJ/article/view/437image matchingconvolutional recurrent neural networkstereo reconstructionmethod errorneural network architecture.
spellingShingle Vladimir Zh. Kuklin
Aslan A. Tatarkanov
Alexander A. Umyskov
Trainable Regularization in Dense Image Matching Problems
HighTech and Innovation Journal
image matching
convolutional recurrent neural network
stereo reconstruction
method error
neural network architecture.
title Trainable Regularization in Dense Image Matching Problems
title_full Trainable Regularization in Dense Image Matching Problems
title_fullStr Trainable Regularization in Dense Image Matching Problems
title_full_unstemmed Trainable Regularization in Dense Image Matching Problems
title_short Trainable Regularization in Dense Image Matching Problems
title_sort trainable regularization in dense image matching problems
topic image matching
convolutional recurrent neural network
stereo reconstruction
method error
neural network architecture.
url https://hightechjournal.org/index.php/HIJ/article/view/437
work_keys_str_mv AT vladimirzhkuklin trainableregularizationindenseimagematchingproblems
AT aslanatatarkanov trainableregularizationindenseimagematchingproblems
AT alexanderaumyskov trainableregularizationindenseimagematchingproblems