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Volume 1, Issue 2 (Online First) - Table of Contents

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Open Access | Research Article | 23 May 2025
IRV2-hardswish Framework: A Deep Learning Approach for Deepfakes Detection and Classification
IECE Journal of Image Analysis and Processing | Volume 1, Issue 2: 45-56, 2025 | DOI: 10.62762/JIAP.2025.421251
Abstract
Deep learning models are pivotal in the advancements of Artificial Intelligence (AI) due to rapid learning and decision-making across various fields such as healthcare, finance, and technology. However, a harmful utilization of deep learning models poses a threat to public welfare, national security, and confidentiality. One such example is Deepfakes, which creates and modifies audiovisual data that humans cannot tell apart from the real ones. Due to the progression of deep learning models that produce manipulated data, accurately detecting and classifying deepfake data becomes a challenge. This paper presents a groundbreaking IRV2-Hardswish Framework for deepfake detection, leveraging a hyb... More >

Graphical Abstract
IRV2-hardswish Framework: A Deep Learning Approach for Deepfakes Detection and Classification