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Image Manipulation Detection Through Laterally Linked Pixels and Kernel Algorithms 被引量:1
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作者 K.K.Thyagharajan g.nirmala 《Computer Systems Science & Engineering》 SCIE EI 2022年第4期357-371,共15页
In this paper,copy-move forgery in image is detected for single image with multiple manipulations such as blurring,noise addition,gray scale conver-sion,brightness modifications,rotation,Hu adjustment,color adjustment,... In this paper,copy-move forgery in image is detected for single image with multiple manipulations such as blurring,noise addition,gray scale conver-sion,brightness modifications,rotation,Hu adjustment,color adjustment,contrast changes and JPEG Compression.However,traditional algorithms detect only copy-move attacks in image and never for different manipulation in single image.The proposed LLP(Laterally linked pixel)algorithm has two dimensional arrays and single layer is obtained through unit linking pulsed neural network for detec-tion of copied region and kernel tricks is applied for detection of multiple manip-ulations in single forged image.LLP algorithm consists of two channels such as feeding component(F-Channel)and linking component(L channel)for linking pixels.LLP algorithm linking pixels detects image with multiple manipulation and copy-move forgery due to one-to-one correspondence between pixel and neu-ron,where each pixel’s intensity is taken as input for F channel of neuron and connected for forgery identification.Furthermore,neuron is connected with neighboringfield of neuron by L channel for detecting forged images with multi-ple manipulations in the image along with copy-move,through kernel trick clas-sifier(KTC).From experimental results,proposed LLP algorithm performs better than traditional algorithms for multiple manipulated copy and paste images.The accuracy obtained through LLP algorithm is about 90%and further forgery detec-tion is improved based on optimized kernel selections in classification algorithm. 展开更多
关键词 Machine learning copy move forgery support vectors KERNEL feature extraction
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