Fine-grained binary analysis method for privacy leakage detection on the cloud platform
Nowadays cloud architecture is widely applied on the internet. New malware aiming at the privacy data stealing or crypto currency mining is threatening the security of cloud platforms. In view of the problems with existing application behavior monitoring methods such as coarse-grained...
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sg-ntu-dr.10356-1468862021-03-12T06:37:02Z Fine-grained binary analysis method for privacy leakage detection on the cloud platform Pan, Jiaye Zhuang, Yi Hu, Xinwen Zhao, Wenbing School of Computer Science and Engineering Engineering::Computer science and engineering Cloud Platform Privacy Leakage Nowadays cloud architecture is widely applied on the internet. New malware aiming at the privacy data stealing or crypto currency mining is threatening the security of cloud platforms. In view of the problems with existing application behavior monitoring methods such as coarse-grained analysis, high performance overhead and lack of applicability, this paper proposes a new fine-grained binary program monitoring and analysis method based on multiple system level components, which is used to detect the possible privacy leakage of applications installed on cloud platforms. It can be used online in cloud platform environments for fine-grained automated analysis of target programs, ensuring the stability and continuity of program execution. We combine the external interception and internal instrumentation and design a variety of optimization schemes to further reduce the impact of fine-grained analysis on the performance of target programs, enabling it to be employed in actual environments. The experimental results show that the proposed method is feasible and can achieve the acceptable analysis performance while consuming a small amount of system resources. The optimization schemes can go beyond traditional dynamic instrumentation methods with better analytical performance and can be more applicable to online analysis on cloud platforms. Published version 2021-03-12T06:37:02Z 2021-03-12T06:37:02Z 2020 Journal Article Pan, J., Zhuang, Y., Hu, X. & Zhao, W. (2020). Fine-grained binary analysis method for privacy leakage detection on the cloud platform. Computers, Materials and Continua, 64(1), 607-622. https://dx.doi.org/10.32604/cmc.2020.09853 1546-2218 https://hdl.handle.net/10356/146886 10.32604/cmc.2020.09853 1 64 607 622 en Computers, Materials and Continua © 2020 The Author(s). This work is licensed under a Creative Commons Attribution 4.0 International License , which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited. application/pdf |
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Engineering::Computer science and engineering Cloud Platform Privacy Leakage Pan, Jiaye Zhuang, Yi Hu, Xinwen Zhao, Wenbing Fine-grained binary analysis method for privacy leakage detection on the cloud platform |
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Nowadays cloud architecture is widely applied on the internet. New malware aiming at the privacy data stealing or crypto currency mining is threatening the security of cloud platforms. In view of the problems with existing application behavior monitoring methods such as coarse-grained analysis, high performance overhead and lack of applicability, this paper proposes a new fine-grained binary program monitoring and analysis method based on multiple system level components, which is used to detect the possible privacy leakage of applications installed on cloud platforms. It can be used online in cloud platform environments for fine-grained automated analysis of target programs, ensuring the stability and continuity of program execution. We combine the external interception and internal instrumentation and design a variety of optimization schemes to further reduce the impact of fine-grained analysis on the performance of target programs, enabling it to be employed in actual environments. The experimental results show that the proposed method is feasible and can achieve the acceptable analysis performance while consuming a small amount of system resources. The optimization schemes can go beyond traditional dynamic instrumentation methods with better analytical performance and can be more applicable to online analysis on cloud platforms. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Pan, Jiaye Zhuang, Yi Hu, Xinwen Zhao, Wenbing |
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Article |
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Pan, Jiaye Zhuang, Yi Hu, Xinwen Zhao, Wenbing |
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Pan, Jiaye |
title |
Fine-grained binary analysis method for privacy leakage detection on the cloud platform |
title_short |
Fine-grained binary analysis method for privacy leakage detection on the cloud platform |
title_full |
Fine-grained binary analysis method for privacy leakage detection on the cloud platform |
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Fine-grained binary analysis method for privacy leakage detection on the cloud platform |
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Fine-grained binary analysis method for privacy leakage detection on the cloud platform |
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fine-grained binary analysis method for privacy leakage detection on the cloud platform |
publishDate |
2021 |
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https://hdl.handle.net/10356/146886 |
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1695706184965685248 |