Adrian-Alin Barglazan and Remus Alin Brad
Adv. Artif. Intell. Mach. Learn., 4 (3):2783-2809
Adrian-Alin Barglazan : University "Lucian Blaga" Sibiu, Romania
Remus Alin Brad : University "Lucian Blaga" Sibiu, Romania
DOI: https://dx.doi.org/10.54364/AAIML.2024.43162
Article History: Received on: 19-Jul-24, Accepted on: 23-Sep-24, Published on: 30-Sep-24
Corresponding Author: Adrian-Alin Barglazan
Email: adrian.barglazan@ulbsibiu.ro
Citation: Adrian-Alin Barglazan, Brad Remus. (2024). Wavelet Based Inpainting Detection. Adv. Artif. Intell. Mach. Learn., 4 (3 ):2783-2809
With the advancement in image editing tools, manipulating digital
images has become alarmingly easy. Inpainting, which is used to remove objects
or fill in parts of an image, serves as a powerful tool for both image
restoration and forgery. This paper introduces a novel approach for detecting
image inpainting forgeries by combining DT-CWT with Hierarchical Feature
segmentation and with noise inconsistency analysis. The DT-CWT offers several
advantages for this task, including inherent shift-invariance, which makes it
robust to minor manipulations during the inpainting process, and directional
selectivity, which helps capture subtle artifacts introduced by inpainting in
specific frequency bands and orientations. By first applying colour image
segmentation and then analysing for each segment, noise inconsistency obtained
via DT-CW we can identify patterns indicative of inpainting forgeries. The
proposed method is evaluated on a benchmark dataset created for this purpose
and is compared with existing forgery detection techniques. Our approach
demonstrates superior results compared with SOTA in detecting inpainted images. The proposed methodology source code is uploaded
here: https://github.com/jmaba/Wavelet-based-inpainting-detection