Research Article

Prediction of Land Image Classification using Squeeze Synchronization layer and Convolve Craft Focus Module in ResNet 101 Model

Volume: 10 Number: 2 July 15, 2025
EN

Prediction of Land Image Classification using Squeeze Synchronization layer and Convolve Craft Focus Module in ResNet 101 Model

Abstract

The classification of image is essential to make LULC (Land Use Land Cover) maps. However, the classification of land cover plays a vital role for studying and modernizing the land areas. Recently, deep learning (DL) techniques have achieved outstanding performance in the classification of high-resolution images. Different techniques have been employed in traditional methods to identify LULC due to its complex and ever-changing nature. However, these studies have shown improved outcomes despite some restrictions such as inaccuracies and reduced performance. To address these problems, the proposed study introduces a Squeeze Synchronization Layer (SSL) and a Convolve Craft Focus Module (CCFM) where, SSL reduces input data complexity by removing noise and irrelevant information from images using pooling and convolutional operations also, CCFM enhances feature extraction to improve land classification accuracy. The EUROSAT land image dataset is utilized for the evaluation of the introduced model. Whereas, the dataset comprises of 64x64 images, which are captured by satellite Sentinel-2A in ResNet 101 input layer. Although, a SSL is suggested, and a CCFM is implemented in the convolutional layer for classifying land images. However, the efficiency of the system is evaluated by measuring performance metrics such as recall, F1-score, precision, and accuracy values of the proposed system. The accuracy value of the proposed system is 96% of accuracy, 100% of precision, 100% of recall, and 100% of F1-score, signifies the superior efficiency of the proposed model

Keywords

References

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Details

Primary Language

English

Subjects

Photogrammetry and Remote Sensing

Journal Section

Research Article

Early Pub Date

January 24, 2025

Publication Date

July 15, 2025

Submission Date

August 26, 2024

Acceptance Date

January 23, 2025

Published in Issue

Year 2025 Volume: 10 Number: 2

APA
Celik, F., & Çelik, K. (2025). Prediction of Land Image Classification using Squeeze Synchronization layer and Convolve Craft Focus Module in ResNet 101 Model. International Journal of Engineering and Geosciences, 10(2), 197-206. https://doi.org/10.26833/ijeg.1538708
AMA
1.Celik F, Çelik K. Prediction of Land Image Classification using Squeeze Synchronization layer and Convolve Craft Focus Module in ResNet 101 Model. IJEG. 2025;10(2):197-206. doi:10.26833/ijeg.1538708
Chicago
Celik, Fatih, and Kemal Çelik. 2025. “Prediction of Land Image Classification Using Squeeze Synchronization Layer and Convolve Craft Focus Module in ResNet 101 Model”. International Journal of Engineering and Geosciences 10 (2): 197-206. https://doi.org/10.26833/ijeg.1538708.
EndNote
Celik F, Çelik K (July 1, 2025) Prediction of Land Image Classification using Squeeze Synchronization layer and Convolve Craft Focus Module in ResNet 101 Model. International Journal of Engineering and Geosciences 10 2 197–206.
IEEE
[1]F. Celik and K. Çelik, “Prediction of Land Image Classification using Squeeze Synchronization layer and Convolve Craft Focus Module in ResNet 101 Model”, IJEG, vol. 10, no. 2, pp. 197–206, July 2025, doi: 10.26833/ijeg.1538708.
ISNAD
Celik, Fatih - Çelik, Kemal. “Prediction of Land Image Classification Using Squeeze Synchronization Layer and Convolve Craft Focus Module in ResNet 101 Model”. International Journal of Engineering and Geosciences 10/2 (July 1, 2025): 197-206. https://doi.org/10.26833/ijeg.1538708.
JAMA
1.Celik F, Çelik K. Prediction of Land Image Classification using Squeeze Synchronization layer and Convolve Craft Focus Module in ResNet 101 Model. IJEG. 2025;10:197–206.
MLA
Celik, Fatih, and Kemal Çelik. “Prediction of Land Image Classification Using Squeeze Synchronization Layer and Convolve Craft Focus Module in ResNet 101 Model”. International Journal of Engineering and Geosciences, vol. 10, no. 2, July 2025, pp. 197-06, doi:10.26833/ijeg.1538708.
Vancouver
1.Fatih Celik, Kemal Çelik. Prediction of Land Image Classification using Squeeze Synchronization layer and Convolve Craft Focus Module in ResNet 101 Model. IJEG. 2025 Jul. 1;10(2):197-206. doi:10.26833/ijeg.1538708

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