Feature Fusion Using Deep Learning Algorithms in Image Classification for Security Purposes by Random Weight Network

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Date

2025

Authors

Kiran, Mustafa Servet
Seyfi, Gokhan
Yilmaz, Merve
Esme, Engin

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Publisher

MDPI

Open Access Color

GOLD

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No

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No
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Abstract

Automated threat detection in X-ray security imagery is a critical yet challenging task, where conventional deep learning models often struggle with low accuracy and overfitting. This study addresses these limitations by introducing a novel framework based on feature fusion. The proposed method extracts features from multiple and diverse deep learning architectures and classifies them using a Random Weight Network (RWN), whose hyperparameters are optimized for maximum performance. The results show substantial improvements at each stage: while the best standalone deep learning model achieved a test accuracy of 83.55%, applying the RWN to a single feature set increased accuracy to 94.82%. Notably, the proposed feature fusion framework achieved a state-of-the-art test accuracy of 97.44%. These findings demonstrate that a modular approach combining multi-model feature fusion with an efficient classifier is a highly effective strategy for improving the accuracy and generalization capability of automated threat detection systems.

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Keywords

Deep Learning, Feature Fusion, Random Weight Network, X-Ray Security

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Q2

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Q2
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Source

Applied Sciences-Basel

Volume

15

Issue

16

Start Page

9053

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Scopus : 1

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Mendeley Readers : 1

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