Laser & Optoelectronics Progress, Volume. 58, Issue 22, 2211003(2021)
Image Manipulation Detection Algorithm Based on Improved RGB-N
How to accurately detect the manipulation trace in images is the research focus in digital image passive forensics. Traditional methods use artificial features to detect, without enough robustness. Although the method based on deep learning has strong detection ability, it pays less attention to false detection on normal images. An improved RGB-N image manipulation detection algorithm is proposed. The algorithm uses F1 score to evaluate the detection performance of manipulation targets, and introduces the false detection rate index on normal images to evaluate the practicability of the algorithm. An adaptive spatial rich model filter is designed, a multi-scale fusion feature extraction network is constructed, and the self attention module is connected to enhance the ability of the model to obtain the global information of the images and improve the detection performance; In order to reduce false detection rate, the authenticity judgement module is designed. The output heat map is used to judge whether the detected target is mistaken. Furthermore, a strategy of manipulating target source image to choose negative samples is applied to increase the distinguishing ability of model. The experiment result shows that the F1 score of improved RGB-N model is 0.759 on the data set with target stitching and erasure, the false detection rate is 0.2% on the non manipulated image data set, and the improved RGB-N model has a good robustness under JPEG compression attack.
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Haoyue Liu, Wenwei Ma, Xiao Fu, Chengxiu Shen, Yaling Wang. Image Manipulation Detection Algorithm Based on Improved RGB-N[J]. Laser & Optoelectronics Progress, 2021, 58(22): 2211003
Category: Imaging Systems
Received: Dec. 31, 2020
Accepted: Jan. 28, 2021
Published Online: Nov. 5, 2021
The Author Email: Haoyue Liu (305240074@qq.com)