Cnn based image forgery detection using pre-trained alexnet model
International Journal of Computational Intelligence & IoT, 2019•papers.ssrn.com
Image forgery detection is an approach for detection and localization of forged component
from a manipulated image. To find manipulation or tampering in the original image, an
adequate number of features are required to classify the given image is either a forged or
non-forged. To achieve this convolutional neural network (CNN) based pre-trained AlexNet
model's deep features have been utilized which are efficient and effective, as compared to
the existing state-of-the-art approaches on publicly available benchmark dataset MICC …
from a manipulated image. To find manipulation or tampering in the original image, an
adequate number of features are required to classify the given image is either a forged or
non-forged. To achieve this convolutional neural network (CNN) based pre-trained AlexNet
model's deep features have been utilized which are efficient and effective, as compared to
the existing state-of-the-art approaches on publicly available benchmark dataset MICC …
Abstract
Image forgery detection is an approach for detection and localization of forged component from a manipulated image. To find manipulation or tampering in the original image, an adequate number of features are required to classify the given image is either a forged or non-forged. To achieve this convolutional neural network (CNN) based pre-trained AlexNet model's deep features have been utilized which are efficient and effective, as compared to the existing state-of-the-art approaches on publicly available benchmark dataset MICC-F220. The experiment result shows that the proposed approach using a pre-trained AlexNet model based deep features with Support Vector Machine (SVM) classifier has achieved 93.94% accuracy.
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