Exposing Image Sharpen Forgeries Based on Dyadic Contrast Contourlet
نویسنده
چکیده
In order to distinguish the sharpening operation in a manipulated image, a sharpen forgeries detection algorithm is proposed. Combined with efficient image signal processing method, a new non-subsampled dyadic contourlet transform based on contrast à trous wavelet is designed. In contourlet domain, sharpening characteristics are analyzed by multi-scale and multi-directional methods. A classifier is trained by artificial intelligence methods to complete sharpening tampered image detection. Experimental results show that the algorithm in this paper can detect possible sharpening and locate the tampering boundary accurately.
منابع مشابه
Exposing Image Fuzzy Forgeries based on Dyadic Contrast Contourlet
In this paper, we combined with efficient image signal processing algorithms, according to the manifestations of the blur of polish operation in the frequency domain,proposed a blind detection algorithm for image tampering evidence. First, the target image transformed into a new Nonsubsampled dyadic contourlet domain which based on contrast à trous wavelet, then homomorphic filtering on it in t...
متن کاملUsing Wavelet-Based Contourlet Transform Illumination Normalization for Face Recognition
Evidently, the results of a face recognition system can be influenced by image illumination conditions. Regarding this, the authors proposed a system using wavelet-based contourlet transform normalization as an efficient method to enhance the lighting conditions of a face image. Particularly, this method can sharpen a face image and enhance its contrast simultaneously in the frequency domain to...
متن کاملImage Denoising Algorithm Based on Dyadic Contourlet Transform
This paper constructs a dyadic non-subsampled Contourlet transform for denoising on the image. The transformation has more directional subband, using the non-subsampled filter group for decompositing of direction, so it has the translation invariance, eliminated image distortion from Contourlet transform’s lack of translation invariance. Non-subsampled filter reduces noise interference and data...
متن کاملMultifocus Image Fusion Algorithms using Dyadic non-subsampled Contourlet Transform
The dyadic wavelet has good multi-scale edge detection and sub-band correlation features. Contourlet transformation has multi-directional characteristics. So a new dyadic nonsampling contourlet transformation is constructed. Firstly, multi-scale decomposition is performed on source images using dyadic contourlet transform to get high-frequency and low-frequency images. And then, according to th...
متن کاملCSCI 6270 COMPUTATIONAL VISION PROJECT Exposing Digital Forgeries in Complex Lighting Environments
The increase in sophistication of image manipulation software such as Adobe Photoshop, coupled with improvements in imaging algorithms, has given rise to digital forgeries that are very hard to detect. My project here is based on the paper ’Exposing Digital Forgeries in Complex Lighting Environments’ [4], wherein the authors detail a technique to identify digital forgeries via inconsistencies i...
متن کامل