Glib Tereshchenko

Work place: Software Engineering, Faculty of Computer Science, Kharkiv National University of Radio Electronics, Kharkiv, 61166, Ukraine

E-mail: hlib.tereshchenko@nure.ua

Website: https://orcid.org/0000-0001-8731-2135

Research Interests:

Biography

Glib Tereshchenko is a researcher and a Senior Lecturer in Software Engineering at Kharkiv National University of Radio Electronics. His research focuses on hybrid data storage models, image processing, blockchain applications in data security, and machine learning for visual data classification. He has contributed to several projects in the domain of intelligent information systems and large-scale visual data management.

Author Articles
Hybrid System for Image Storage and Retrieval in Big Data Environments

By Glib Tereshchenko Iryna Kyrychenko Victoria Vysotska Zhengbing Hu Yuriy Ushenko Mariia Talakh

DOI: https://doi.org/10.5815/ijigsp.2025.03.04, Pub. Date: 8 Jun. 2025

This paper presents a hybrid image storage model for big data environments. The model combines relational and non-relational (NoSQL) databases, file systems (IPFS), and blockchain technologies to ensure an optimal balance between performance, scalability, and security in image storage. The existing approaches to organising image data storage and image compression methods in decentralised systems are analysed. Optimised image indexing is proposed to accelerate data search and access. A prototype system based on the proposed model was developed, and an experimental study was conducted on various image datasets (medical, satellite, and digital art). The experimental results demonstrate that the hybrid model outperforms traditional approaches: image access time is reduced by ~30% compared to standalone storage systems, providing high scalability (with increased nodes, processing time decreases nonlinearly). The efficiency of image compression in reducing storage costs in blockchain-oriented systems is also confirmed: the WebP format allows file size to be reduced by 40–60% while maintaining acceptable quality (PSNR > 30 dB). The proposed solution is relevant for medical diagnostics, video surveillance systems, geographic information systems, and other fields requiring reliable storage and fast processing of large-scale image datasets.

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