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Image Steganalysis System optimization Based on Boundary Samples

Image Steganalysis System optimization Based on Boundary Samples
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摘要 In the image steganalysis,the training samples often determine the performance of the model when the features and classification are in the same condition.However the existing research on steganalysis lacks the in-depth study of the classifier's training method which may deeply influence the detection performance.This paper provides an optimization of universal steganalysis based on the boundary samples classification concerning about image steganalysis.This paper proposes a strategy of selecting boundary samples in steganalysis and divides the training samples into good samples,poor samples and boundary samples three categories and then chose the optimal threshold to get boundary samples through experiments.The experimental results show the effectiveness of boundary sample,which dramatically improve detection capability especially for the low embedding rate Stego-image. In the image steganalysis,the training samples often determine the performance of the model when the features and classification are in the same condition.However the existing research on steganalysis lacks the in-depth study of the classifier's training method which may deeply influence the detection performance.This paper provides an optimization of universal steganalysis based on the boundary samples classification concerning about image steganalysis.This paper proposes a strategy of selecting boundary samples in steganalysis and divides the training samples into good samples,poor samples and boundary samples three categories and then chose the optimal threshold to get boundary samples through experiments.The experimental results show the effectiveness of boundary sample,which dramatically improve detection capability especially for the low embedding rate Stego-image.
出处 《Journal of Harbin Institute of Technology(New Series)》 EI CAS 2014年第6期57-62,共6页 哈尔滨工业大学学报(英文版)
基金 Sponsored by the National Natural Science Foundation of China(Grant No.61373169 and 61272453) Doctoral Fund of Ministry of Education of China(Grant No.0110141130006)
关键词 image steganalysis digital forensics support vector machine(SVM) boundary samples image steganalysis digital forensics support vector machine(SVM) boundary samples
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参考文献1

  • 1HUANG FangJun1,2 & HUANG JiWu1,2 1 School of Information Science and Technology,Sun Yat-Sen University,Guangzhou 510275,China,2 Guangdong Key Lab. of Information Security Technology,Sun Yat-Sen University,Guangzhou 510275,China.Calibration based universal JPEG steganalysis[J].Science in China(Series F),2009,52(2):260-268. 被引量:8

二级参考文献10

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