Convolutional Neural Network-based image tamper detection with Error Level Analysis
S Manjunatha., M D Swetha, S Rashmi, Ananda Kumar Subramanian, V. Vinoth Kumar, Mallikarjuna Swamy S
Abstract
Photography is the most important, powerful, and reliable means of expression. Today, digital images not only provide disinformation but also act as agents for secret communication. Users and editing professionals work with digital images for a variety of purposes. Images are often regarded as facts or proof of reality, so they are misleading and fake news or publications of any form that use images manipulated in a highly misleading way. To recognize image tampering needs multiple image data and a model that can handle all the pixels in the image. Furthermore, training the data more efficiently and needed flexibility support everyday use. Models based on Deep learning such as Convolutional Neural Networks with error level analysis (ELA) are the perfect solution.