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ACCENTS Transactions on Image Processing and Computer Vision (TIPCV)

ISSN (Print):    ISSN (Online):2455-4707
Volume-6 Issue-18 February-2020
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Paper Title : Fake colorized and morphed image detection using convolutional neural network
Author Name : Neetu Pillai
Abstract :

As the technology develops, utilization of the phony pictures is at highest, So, as per an overview most of the pictures stored on the server or in the cloud are being transformed or counterfeit. As a result, it is difficult to identify whether the images stored are real or not. So not many systems are existing today which are equipped to tell whether pictures are fake or not. Earlier Histogram based and feature extraction-based methods were used to identify fake images. The neural network is being the most advanced technology distinguishes the phony pictures by studying various features of the image and learning the procedure of faking an image. So as a minor advance towards this, proposed system uses features like dark channel, bright channel, RGB channel and alpha channel. Using Gaussian distribution, we can anlayze the edges of the images to identify phony images. Deep layer analysis is performed using convolutional neural system along with the fuzzy classification procedure to improve the likelihood of recognizing phony pictures. Through this research it is concluded that convolutional neural networks (CNN) based fake colorized image detection showcases a better result than histogram based and feature extraction based fake colorized image detection.

Keywords : Convolution neural network, Gaussian distribution, Fuzzy classification.
Cite this article : Pillai N. Fake colorized and morphed image detection using convolutional neural network. ACCENTS Transactions on Image Processing and Computer Vision. 2020; 6(18):8-16. DOI:10.19101/TIPCV.2020.618011.
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