IECE Journal of Image Analysis and Processing

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The IECE Journal of Image Analysis and Processing aims to advance the field of digital image processing by publishing cutting-edge research that addresses both theoretical and practical challenges. The journal highlights innovative methodologies, algorithms, and applications in image enhancement, restoration, segmentation, recognition, and analysis. It emphasizes the integration of emerging technologies, including machine learning, artificial intelligence, and deep learning, to improve image processing techniques and applications. The journal also focuses on applying these technologies in medical imaging, computer vision, remote sensing, and multimedia fields. The journal aspires to be a leading source of knowledge and innovation in the digital imaging community by providing a platform for high-quality research and fostering interdisciplinary collaboration.
E-mail:[email protected]  DOI Prefix: 10.62762/JIAP
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Recent Articles

Open Access | Research Article | 20 March 2025
Plant Disease Detection Using Deep Learning Techniques
IECE Journal of Image Analysis and Processing | Volume 1, Issue 1: 36-44, 2025 | DOI:10.62762/JIAP.2025.227089
Abstract
Plant diseases create one of the most serious risks to the world's food supply, reducing agricultural production and endangering millions of people's lives. These illnesses can destroy crops, disrupt food supply networks, and increase the danger of food deficiency, emphasizing the importance of establishing strong methods to protect the world's food sources. The approaches of deep learning have transformed the field of plant disease diagnosis, providing sophisticated and perfect solutions for early detection and management. However, a prevalent concern with deep learning models is their susceptibility to a lack of generalization and robustness when faced with novel crop and disease categorie... More >

Graphical Abstract
Plant Disease Detection Using Deep Learning Techniques

Open Access | Research Article | 14 March 2025
High-Quality Multi-Focus Image Fusion: A Comparative Analysis of DCT-Based Approaches with Their Variants
IECE Journal of Image Analysis and Processing | Volume 1, Issue 1: 27-35, 2025 | DOI:10.62762/JIAP.2024.764051
Abstract
Image fusion, especially in the context of multi-focus image fusion, plays a crucial role in digital image processing by enhancing the clarity and detail of visual content through the combination of multiple source images. Traditional spatial domain methods often suffer from issues like spectral distortion and low contrast, which has led researchers to explore techniques in the frequency domain, such as the Discrete Cosine Transform (DCT). DCT-based methods are particularly valued for their computational efficiency, making them a strong alternative, especially in applications like image compression and fusion. This study focuses on DCT-based approaches, including variants that incorporate Si... More >

Graphical Abstract
High-Quality Multi-Focus Image Fusion: A Comparative Analysis of DCT-Based Approaches with Their Variants

Open Access | Research Article | 16 February 2025
Leveraging Machine Learning and Deep Learning for Advanced Malaria Detection Through Blood Cell Images
IECE Journal of Image Analysis and Processing | Volume 1, Issue 1: 17-26, 2025 | DOI:10.62762/JIAP.2025.514726
Abstract
Malaria remains a significant global health challenge, causing hundreds of thousands of deaths annually, particularly in tropical and subtropical regions. This study proposes an advanced automated approach for malaria detection by classifying red blood cell images using machine learning and deep learning techniques. Three distinct models: Logistic Regression (LR), Support Vector Machine (SVM), and Inception-V3 were implemented and rigorously evaluated on a dataset comprising 27,558 cell images. The LR model achieved an accuracy of 65.38%, while SVM demonstrated improved classification performance with an accuracy of 84%. The deep learning-based Inception-V3 model outperformed both, achieving... More >

Graphical Abstract
Leveraging Machine Learning and Deep Learning for Advanced Malaria Detection Through Blood Cell Images

Open Access | Research Article | 08 December 2024
AlexNet based Ensembel Approach for Synthetic Aperture Radar Target Classification under Different Conditions
IECE Journal of Image Analysis and Processing | Volume 1, Issue 1: 5-16, 2024 | DOI:10.62762/JIAP.2024.927304
Abstract
This paper presents an ensemble approach for Synthetic Aperture Radar (SAR) Automatic Target Recognition (ATR) that integrates AlexNet, Support Vector Machine (SVM), and template matching through majority voting to improve classification accuracy under various operating conditions. The study utilizes the MSTAR dataset, focusing on both Standard Operating Conditions (SOC) and Extended Operating Conditions (EOC). The methodology begins with SAR image preprocessing, applying threshold segmentation with histogram equalization and morphological filtering to extract target regions. These regions undergo feature extraction, with AlexNet and SVM separately classifying the targets, while template mat... More >

Graphical Abstract
AlexNet based Ensembel Approach for Synthetic Aperture Radar Target Classification under Different Conditions

Open Access | Editorial | 04 October 2024
Navigating the Publication Process: What Editors of Journal of Image Analysis and Processing Expect
IECE Journal of Image Analysis and Processing | Volume 1, Issue 1: 1-4, 2024 | DOI:10.62762/JIAP.2024.674931
Abstract
This editorial provides a comprehensive guide for authors looking to publish in the Journal of Image Analysis and Processing. It outlines the key aspects that editors prioritize, including alignment with the journal’s aims and scope, originality, and technical rigor. Authors are encouraged to focus on innovative contributions in image processing, ensuring their research is well-structured, clearly written, and ethically sound. The article also emphasizes the importance of practical relevance, data transparency, and adhering to submission guidelines. By understanding these requirements, authors can improve their chances of successfully navigating the fast review process and achieving public... More >
Journal Statistics
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IECE Journal of Image Analysis and Processing

IECE Journal of Image Analysis and Processing

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