Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Optimization of a Pre-Trained AlexNet Model for Detecting and Localizing Image Forgeries

View through CrossRef
With the advance of many image manipulation tools, carrying out image forgery and concealing the forgery is becoming easier. In this paper, the convolution neural network (CNN) innovation for image forgery detection and localization is discussed. A novel image forgery detection model using AlexNet framework is introduced. We proposed a modified model to optimize the AlexNet model by using batch normalization instead of local Response normalization, a maxout activation function instead of a rectified linear unit, and a softmax activation function in the last layer to act as a classifier. As a consequence, the AlexNet proposed model can carry out feature extraction and as well as detection of forgeries without the need for further manipulations. Throughout a number of experiments, we examine and differentiate the impacts of several important AlexNet design choices. The proposed networks model is applied on CASIA v2.0, CASIA v1.0, DVMM, and NIST Nimble Challenge 2017 datasets. We also apply k-fold cross-validation on datasets to divide them into training and test data samples. The experimental results achieved prove that the proposed model can accomplish a great performance for detecting different sorts of forgeries. Quantitative performance analysis of the proposed model can detect image forgeries with 98.176% accuracy.
Title: Optimization of a Pre-Trained AlexNet Model for Detecting and Localizing Image Forgeries
Description:
With the advance of many image manipulation tools, carrying out image forgery and concealing the forgery is becoming easier.
In this paper, the convolution neural network (CNN) innovation for image forgery detection and localization is discussed.
A novel image forgery detection model using AlexNet framework is introduced.
We proposed a modified model to optimize the AlexNet model by using batch normalization instead of local Response normalization, a maxout activation function instead of a rectified linear unit, and a softmax activation function in the last layer to act as a classifier.
As a consequence, the AlexNet proposed model can carry out feature extraction and as well as detection of forgeries without the need for further manipulations.
Throughout a number of experiments, we examine and differentiate the impacts of several important AlexNet design choices.
The proposed networks model is applied on CASIA v2.
0, CASIA v1.
0, DVMM, and NIST Nimble Challenge 2017 datasets.
We also apply k-fold cross-validation on datasets to divide them into training and test data samples.
The experimental results achieved prove that the proposed model can accomplish a great performance for detecting different sorts of forgeries.
Quantitative performance analysis of the proposed model can detect image forgeries with 98.
176% accuracy.

Related Results

WF-AlexNet:AlexNet with Automatically Optimized Hyperparameters for Weather Forecasting
WF-AlexNet:AlexNet with Automatically Optimized Hyperparameters for Weather Forecasting
Image classification is a critical area of research with widespread applications across various disciplines, including computer vision, pattern recognition, and artificial intellig...
Car make and model recognition using convolutional neural network: fine-tune AlexNet architecture
Car make and model recognition using convolutional neural network: fine-tune AlexNet architecture
Artificial intelligence (AI) has significantly contributed to car make and model recognition in this current era of intelligent technology. By using AI, it is much easier to identi...
Brain tumor detection using CNN, AlexNet & GoogLeNet ensembling learning approaches
Brain tumor detection using CNN, AlexNet & GoogLeNet ensembling learning approaches
<abstract> <p>The detection of neurological disorders and diseases is aided by automatically identifying brain tumors from brain magnetic resonance imaging (MRI) images...
IMAGE-BASED OIL PALM LEAVES DISEASE DETECTION USING CONVOLUTIONAL NEURAL NETWORK
IMAGE-BASED OIL PALM LEAVES DISEASE DETECTION USING CONVOLUTIONAL NEURAL NETWORK
Over the years, numerous studies have been conducted on the integration of computer vision and machine learning in plant disease detection. However, these conventional machine lear...
Combating Digital Forgeries: Advanced AI Techniques for Detecting Forgeries of Diverse Data
Combating Digital Forgeries: Advanced AI Techniques for Detecting Forgeries of Diverse Data
Detecting forgeries in diverse datasets involves identifying alterations or manipulations of various digital media, such as images, videos, and documents. There are unique challeng...
Cultural Status of Art Forgeries
Cultural Status of Art Forgeries
This article explores the cultural status and significance of forgeries in the world of art, as well as tracing an evolution of the changes in their perception. Forgeries are gener...
Deep Learning-Based Ensemble Two-Step Classification of Medical Images Using CNN Architectures and Ensemble Methods
Deep Learning-Based Ensemble Two-Step Classification of Medical Images Using CNN Architectures and Ensemble Methods
Breast cancer remains one of the most common cancers amongst women globally. Early detection is crucial for improving survival rates. While mammography is widely used and an effect...
Exploring the Impact of Variability in Resistance Distributions of RRAM on the Prediction Accuracy of Deep Learning Neural Networks
Exploring the Impact of Variability in Resistance Distributions of RRAM on the Prediction Accuracy of Deep Learning Neural Networks
In this work, we explore the use of the resistive random access memory (RRAM) device as a synapse for mimicking the trained weights linking neurons in a deep learning neural networ...

Back to Top