With the rapid development of digital information technology,images are increasingly used in various fields.To ensure the security of image data,prevent unauthorized tampering and leakage,maintain personal privacy,and...With the rapid development of digital information technology,images are increasingly used in various fields.To ensure the security of image data,prevent unauthorized tampering and leakage,maintain personal privacy,and protect intellectual property rights,this study proposes an innovative color image encryption algorithm.Initially,the Mersenne Twister algorithm is utilized to generate high-quality pseudo-random numbers,establishing a robust basis for subsequent operations.Subsequently,two distinct chaotic systems,the autonomous non-Hamiltonian chaotic system and the tentlogistic-cosine chaotic mapping,are employed to produce chaotic random sequences.These chaotic sequences are used to control the encoding and decoding process of the DNA,effectively scrambling the image pixels.Furthermore,the complexity of the encryption process is enhanced through improved Joseph block scrambling.Thorough experimental verification,research,and analysis,the average value of the information entropy test data reaches as high as 7.999.Additionally,the average value of the number of pixels change rate(NPCR)test data is 99.6101%,which closely approaches the ideal value of 99.6094%.This algorithm not only guarantees image quality but also substantially raises the difficulty of decryption.展开更多
This study proposes a novel multi-fractal spectrumbasedapproach to distinguish linear block codes from its selfsynchronousscrambled codes. Given that the linear block codeand self-synchronous scrambled linear block co...This study proposes a novel multi-fractal spectrumbasedapproach to distinguish linear block codes from its selfsynchronousscrambled codes. Given that the linear block codeand self-synchronous scrambled linear block code share the propertyof linear correlation, the existing linear correlation-basedidentification method is invalid for this case. This drawback can becircumvented by introducing a novel multi-fractal spectrum-basedmethod. Simulation results show that the new method has highrobustness and under the same conditions of bit error, the lowerthe code rate, the higher the recognition rate. Thus, the methodhas significant potential for future application in engineering.展开更多
针对传统隐私保护机器学习方案抵抗对抗攻击能力较弱的特点,提出一种基于格雷码置乱和分块混沌置乱的医学影像加密方案(Gray+block chaotic scrambling optimized for medical image encryption,GBCS),并应用于隐私保护的分类挖掘。首...针对传统隐私保护机器学习方案抵抗对抗攻击能力较弱的特点,提出一种基于格雷码置乱和分块混沌置乱的医学影像加密方案(Gray+block chaotic scrambling optimized for medical image encryption,GBCS),并应用于隐私保护的分类挖掘。首先对图像进行位平面切割;然后,对图像不同位平面进行格雷码置乱后再进行分块,在分块的基础上分别进行混沌加密;最后通过深度网络对加密后的图像进行分类学习。通过在公开乳腺癌和青光眼数据集上进行交叉验证仿真实验,对GBCS的隐私保护与分类性能进行量化分析,并从图像直方图、信息熵和对抗攻击能力等指标考虑其安全性。实验结果表明医学图像在GBCS加密前后的性能差距在可接受范围内,方案能更好地平衡性能与隐私保护的矛盾,能有效抵御对抗样本的攻击,验证了本文方法的有效性。展开更多
基金supported by the Open Fund of Advanced Cryptography and System Security Key Laboratory of Sichuan Province(Grant No.SKLACSS-202208)the Natural Science Foundation of Chongqing(Grant No.CSTB2023NSCQLZX0139)the National Natural Science Foundation of China(Grant No.61772295).
文摘With the rapid development of digital information technology,images are increasingly used in various fields.To ensure the security of image data,prevent unauthorized tampering and leakage,maintain personal privacy,and protect intellectual property rights,this study proposes an innovative color image encryption algorithm.Initially,the Mersenne Twister algorithm is utilized to generate high-quality pseudo-random numbers,establishing a robust basis for subsequent operations.Subsequently,two distinct chaotic systems,the autonomous non-Hamiltonian chaotic system and the tentlogistic-cosine chaotic mapping,are employed to produce chaotic random sequences.These chaotic sequences are used to control the encoding and decoding process of the DNA,effectively scrambling the image pixels.Furthermore,the complexity of the encryption process is enhanced through improved Joseph block scrambling.Thorough experimental verification,research,and analysis,the average value of the information entropy test data reaches as high as 7.999.Additionally,the average value of the number of pixels change rate(NPCR)test data is 99.6101%,which closely approaches the ideal value of 99.6094%.This algorithm not only guarantees image quality but also substantially raises the difficulty of decryption.
基金supported by the National Natural Science Foundation of China(61171170) the Natural Science Foundation of Anhui Province(1408085QF115)
文摘This study proposes a novel multi-fractal spectrumbasedapproach to distinguish linear block codes from its selfsynchronousscrambled codes. Given that the linear block codeand self-synchronous scrambled linear block code share the propertyof linear correlation, the existing linear correlation-basedidentification method is invalid for this case. This drawback can becircumvented by introducing a novel multi-fractal spectrum-basedmethod. Simulation results show that the new method has highrobustness and under the same conditions of bit error, the lowerthe code rate, the higher the recognition rate. Thus, the methodhas significant potential for future application in engineering.
文摘针对传统隐私保护机器学习方案抵抗对抗攻击能力较弱的特点,提出一种基于格雷码置乱和分块混沌置乱的医学影像加密方案(Gray+block chaotic scrambling optimized for medical image encryption,GBCS),并应用于隐私保护的分类挖掘。首先对图像进行位平面切割;然后,对图像不同位平面进行格雷码置乱后再进行分块,在分块的基础上分别进行混沌加密;最后通过深度网络对加密后的图像进行分类学习。通过在公开乳腺癌和青光眼数据集上进行交叉验证仿真实验,对GBCS的隐私保护与分类性能进行量化分析,并从图像直方图、信息熵和对抗攻击能力等指标考虑其安全性。实验结果表明医学图像在GBCS加密前后的性能差距在可接受范围内,方案能更好地平衡性能与隐私保护的矛盾,能有效抵御对抗样本的攻击,验证了本文方法的有效性。