PERFORMANCE COMPARISON OF U-NET AND LINKNET WITH DIFFERENT ENCODERS FOR REFORESTATION DETECTION

Main Article Content

Andrii Podorozhniak
Daniil Onishchenko
Nataliia Liubchenko
Denys Grynov

Abstract

The subject of study is analysis of performance of artificial intelligence systems with different architectures for reforestation detection. The goal is to implement, train and evaluate system with different models for deforestation and reforestation detection. The tasks are to study problems and potential solutions in forestry for reforestation detection and present own solution. As part of model comparison, results are presented for different artificial neural network architectures with different encoders. For training and testing purpose custom dataset was created, which includes different areas of territory of Ukraine within different timestamps. Main research methods are literature analysis, experiment and case study. As a result of analysis of modern artificial intelligence methods, machine learning, deep learning and convolutional neural networks, high-precision algorithms U-Net and LinkNet were chosen for system implementation. Conclusions. The studied problem was stated formally and broken down in smaller steps; possible solutions were studied and proposed solution was described in details. Necessary mathematical background for analysis of the performance was provided. As part of the development, accurate deforestation/reforestation module was created. All analysis results were listed and a comparison of the studied algorithms was presented.

Article Details

How to Cite
Podorozhniak , A. ., Onishchenko , D. ., Liubchenko , N. ., & Grynov , D. . (2024). PERFORMANCE COMPARISON OF U-NET AND LINKNET WITH DIFFERENT ENCODERS FOR REFORESTATION DETECTION . Advanced Information Systems, 8(1), 80–85. https://doi.org/10.20998/2522-9052.2024.1.10
Section
Intelligent information systems
Author Biographies

Andrii Podorozhniak , National Technical University "Kharkiv Polytechnic Institute", Kharkiv

Candidate of Technical Sciences, Associate Professor, Professor of Computer Engineering and Programming Department

Daniil Onishchenko , National Technical University "Kharkiv Polytechnic Institute", Kharkiv

bachelor of Computer Science

Nataliia Liubchenko , National Technical University "Kharkiv Polytechnic Institute", Kharkiv

Candidate of Technical Sciences, Associate Professor, Associate Professor of Systems Analysis and Information-Analytical Technologies Department

Denys Grynov , National Technical University "Kharkiv Polytechnic Institute", Kharkiv

Candidate of Technical Sciences, Associate Professor, Associate Professor of Computer Engineering and Programming Department

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